1. Probe Machine
Author(s): Jin Xu
Page(s): 1405 - 1416
2. Learning Compositional Shape Models of Multiple Distance Metrics by Information Projection
Author(s): Ping Luo; Liang Lin; Xiaobai Liu
Page(s): 1417 - 1428
3. Comparison Analysis: Granger Causality and New Causality and Their Applications to Motor Imagery
Author(s): Sanqing Hu; Hui Wang; Jianhai Zhang; Wanzeng Kong; Yu Cao; Robert Kozma
Page(s): 1429 - 1444
4. Alternative Multiview Maximum Entropy Discrimination
Author(s): Guoqing Chao; Shiliang Sun
Page(s): 1445 - 1456
5. Parallel Online Temporal Difference Learning for Motor Control
Author(s): Wouter Caarls; Erik Schuitema
Page(s): 1457 - 1468
6. Sparse Uncorrelated Linear Discriminant Analysis for Undersampled Problems
Author(s): Xiaowei Zhang; Delin Chu; Roger C. E. Tan
Page(s): 1469 - 1485
7. Stability Analysis for Delayed Neural Networks Considering Both Conservativeness and Complexity
Author(s): Chuan-Ke Zhang; Yong He; Lin Jiang; Min Wu
Page(s): 1486 - 1501
8. Compound Rank-k Projections for Bilinear Analysis
Author(s): Xiaojun Chang; Feiping Nie; Sen Wang; Yi Yang; Xiaofang Zhou; Chengqi Zhang
Page(s): 1502 - 1513
9. Constrained Clustering With Nonnegative Matrix Factorization
Author(s): Xianchao Zhang; Linlin Zong; Xinyue Liu; Jiebo Luo
Page(s): 1514 - 1526
10. Control of Large-Scale Boolean Networks via Network Aggregation
Author(s): Yin Zhao; Bijoy K. Ghosh; Daizhan Cheng
Page(s): 1527 - 1536
11. Near-Optimal Controller for Nonlinear Continuous-Time Systems With Unknown Dynamics Using Policy Iteration
Author(s): Samrat Dutta; Prem Kumar Patchaikani; Laxmidhar Behera
Page(s): 1537 - 1549
12. Image Super-Resolution via Adaptive \ell _{p} (0< p< 1) Regularization and Sparse Representation
Author(s): Feilong Cao; Miaomiao Cai; Yuanpeng Tan; Jianwei Zhao
Page(s): 1550 - 1561
13. Neural Network Control-Based Adaptive Learning Design for Nonlinear Systems With Full-State Constraints
Author(s): Yan-Jun Liu; Jing Li; Shaocheng Tong; C. L. Philip Chen
Page(s): 1562 - 1571
14. Learning Spike Time Codes Through Morphological Learning With Binary Synapses
Author(s): Subhrajit Roy; Phyo Phyo San; Shaista Hussain; Lee Wang Wei; Arindam Basu
Page(s): 1572 - 1577
15. Saturated Finite Interval Iterative Learning for Tracking of Dynamic Systems With HNN-Structural Output
Author(s): Wenjun Xiong; Daniel W. C. Ho; Xinghuo Yu
Page(s): 1578 - 1584
16. Pinning Control Design for the Stabilization of Boolean Networks
Author(s): Fangfei Li
Page(s): 1585 - 1590
17. Can the Virtual Labels Obtained by Traditional LP Approaches Be Well Encoded in WLR?
Author(s): Qiaolin Ye; Jian Yang; Tongming Yin; Zhao Zhang
Page(s): :1591 - 1598
Saturday, July 2, 2016
Sunday, June 12, 2016
Weekly Review 11 June 2016
Some interesting links that I Tweeted about in the last week:
- What happens when you run Bladerunner through a deep-learning autoencoder: http://www.vox.com/2016/6/1/11787262/blade-runner-neural-network-encoding
- Concise explanation of the difference between regular machine learning and deep learning: http://www.kdnuggets.com/2016/06/difference-between-deep-learning-regular-machine-learning.html
- On why AI needs a "big red button": http://www.theverge.com/2016/6/3/11856744/google-deep-mind-big-red-button-interupt-ai
- Data mining unstructured data with deep learning: http://www.datanami.com/2016/06/03/unstructured-data-miners-chase-silver-deep-learning/
- How AI is changing SEO: http://techcrunch.com/2016/06/04/artificial-intelligence-is-changing-seo-faster-than-you-think/
- How AI-based "Driver Assistance Systems" will dominate the markup before autonomous vehicles: http://www.computerworld.com/article/3079044/car-tech/ai-guardian-angel-vehicles-will-dominate-auto-industry-says-toyota-exec.html
- This is the era of AI: http://fortune.com/2016/06/03/tech-ceos-artificial-intelligence/
- China's obsession with quantity over quality leads to corruption. fraud in science: http://www.economist.com/news/science-and-technology/21699898-fraud-bureaucracy-and-obsession-quantity-over-quality-still-hold-chinese?fsrc=scn/tw/te/pe/ed/schrdingerspanda
- Will Artificial Intelligences end up with human rights? http://www.telegraph.co.uk/science/2016/05/29/computers-could-develop-consciousness-and-may-need-human-rights/
- The future of AI on smart phones: http://dataconomy.com/forget-siri-machine-learning-ai-coming-smartphone/
- The truth about deep learning: http://www.kdnuggets.com/2016/06/truth-deep-learning.html
- Why TensorFlow is a game-changer: http://www.datasciencecentral.com/profiles/blogs/tensorflow-why-google-s-artificial-intelligence-engine-is-a
- List of resources for an open-source machine learning degree: http://www.kdnuggets.com/2016/06/open-source-machine-learning-degree.html
- How to do machine learning, from Uber's head of machine learning: http://techemergence.com/ubers-head-of-machine-learning-thinks-you-might-be-doing-it-wrong/
- Ten frightening uses of AI: http://www.techrepublic.com/pictures/10-terrifying-uses-of-artificial-intelligence/
- A new neural processor: http://www.computerworld.com/article/3079349/artificial-intelligence/a-former-nasa-chief-just-launched-this-ai-startup-to-turbocharge-neural-computing.html
- A test shows that a medical AI is as accurate on triage as an experienced doctor: http://motherboard.vice.com/en_au/read/a-health-apps-ai-took-on-human-doctors-to-triage-patients
- An AI web designer: http://www.techrepublic.com/article/new-wix-adi-uses-artificial-intelligence-to-design-your-small-business-website/
- The industries being redefined by machine learning: http://www.forbes.com/sites/louiscolumbus/2016/06/04/machine-learning-is-redefining-the-enterprise-in-2016/#5fd98f705fc0
- LinkedIn's contribution to machine learning: http://www.datanami.com/2016/06/07/linkedin-adds-growing-list-ml-tools/
- Using AI in human longevity research: http://nextbigfuture.com/2016/06/artificial-intelligence-to-spearhead.html
- Combining AI with the power of crowds: http://techcrunch.com/2016/06/07/crowdflower-series-d/
- Business opportunities of machine learning: http://www.kdnuggets.com/2016/06/opportunites-machine-learning-startups.html
- A new company using AI in computer security: http://www.datanami.com/2016/06/08/another-ai-based-security-startup-gains-funding/
- More details about Armorway, startup using AI in computer security: http://www.techrepublic.com/article/armorway-grabs-2-5-million-to-expand-ai-security-platform/
- DeepMind's five-year plan for AI in healthcare: http://techcrunch.com/2016/06/08/nhs-memo-details-googledeepminds-five-year-plan-to-bring-ai-to-healthcare/
- TensorFlow is now available for iOS: http://www.theverge.com/2016/6/8/11885924/google-tensorflow-release-ios-magenta-neural-network
- Artificial intelligence vs cancer: http://www.bbc.com/news/health-36482333
- Another company, Cyclance, also using AI for computer security: http://www.computerworld.com/article/3081326/security/this-company-uses-ai-to-stop-cyberattacks-before-they-start.html
- Behavioural psychologists are now testing artificial intelligences: https://www.technologyreview.com/s/601646/the-ai-machines-undergoing-behavioral-psychology-tests/
- More on Google's Project Magenta, their AI composer: https://www.technologyreview.com/s/601642/ok-computer-write-me-a-song/
- A deep neural network rendered 2001: A Space Odyssey in the style of Picasso: http://motherboard.vice.com/en_au/read/a-neural-network-rendered-kubricks-2001-in-the-style-of-pablo-picasso
- A free e-book on data science: http://www.datasciencecentral.com/profiles/blogs/free-e-book-exploring-data-science
- Google is developing its own version of Asimov's laws of robotics: http://www.extremetech.com/extreme/229806-google-is-starting-to-design-its-own-version-of-asimovs-laws-of-robotics
- A whitepaper on AI and machine learning in the insurance industry: http://1.fc-bi.com/LP=12421
- A movie written in collaboration with an AI: http://arstechnica.com/the-multiverse/2016/06/an-ai-wrote-this-movie-and-its-strangely-moving/
- The security risks of AI: http://www.datanami.com/2016/06/10/ai-coming-prompting-new-security-concerns/
- There is still bias in peer review and in funding decisions: http://arstechnica.com/science/2016/06/implicit-bias-still-hinders-minority-researchers/
- Google DeepMind is mastering more difficult video games, thanks to curiosity: http://www.theverge.com/2016/6/9/11893002/google-ai-deepmind-atari-montezumas-revenge
- With quantum computers will come quantum machine learning: http://nextbigfuture.com/2016/06/google-hartmut-neven-predicts-that.html
- The jobs that AI will destroy first: http://www.idgconnect.com/abstract/17250/no-robots-required-ai-eliminate-jobs
- Why more women don't code - or even get into IT in general: https://theconversation.com/the-real-reason-more-women-dont-code-59663
Labels:
Twitter,
weekly review
Sunday, June 5, 2016
IEEE Transactions on Neural Networks and Learning Systems, Volume 27, Issue 6, June 2016
1) Guest Editorial Special Section on Visual Saliency Computing and Learning
Author(s): Junwei Han; Ling Shao; Nuno Vasconcelos; Jungong Han; Dong Xu
Page(s): 1118 - 1121
2) Manifold Ranking-Based Matrix Factorization for Saliency Detection
Author(s): Dapeng Tao; Jun Cheng; Mingli Song; Xu Lin
Page(s): 1122 - 1134
3) DISC: Deep Image Saliency Computing via Progressive Representation Learning
Author(s): Tianshui Chen; Liang Lin; Lingbo Liu; Xiaonan Luo; Xuelong Li
Page(s): 1135 - 1149
4) Human-Centered Saliency Detection
Author(s): Zhenbao Liu; Xiao Wang; Shuhui Bu
Page(s): 1150 - 1162
5) Cosaliency Detection Based on Intrasaliency Prior Transfer and Deep Intersaliency Mining
Author(s): Dingwen Zhang; Junwei Han; Jungong Han; Ling Shao
Page(s): 1163 - 1176
6) Spatiochromatic Context Modeling for Color Saliency Analysis
Author(s): Jun Zhang; Meng Wang; Shengping Zhang; Xuelong Li; Xindong Wu
Page(s): 1177 - 1189
7) Dual Low-Rank Pursuit: Learning Salient Features for Saliency Detection
Author(s): Congyan Lang; Jiashi Feng; Songhe Feng; Jingdong Wang; Shuicheng Yan
Page(s): 1190 - 1200
8) Improving Visual Saliency Computing With Emotion Intensity
Author(s): Huiying Liu; Min Xu; Jinqiao Wang; Tianrong Rao; Ian Burnett
Page(s): 1201 - 1213
9) Reconciling Saliency and Object Center-Bias Hypotheses in Explaining Free-Viewing Fixations
Author(s): Ali Borji; James Tanner
Page(s): 1214 - 1226
10) Bottom–Up Visual Saliency Estimation With Deep Autoencoder-Based Sparse Reconstruction
Author(s): Chen Xia; Fei Qi; Guangming Shi
Page(s): 1227 - 1240
11) Learning to Predict Sequences of Human Visual Fixations
Author(s): Ming Jiang; Xavier Boix; Gemma Roig; Juan Xu; Luc Van Gool; Qi Zhao
Page(s): 1241 - 1252
12) Saliency-Aware Nonparametric Foreground Annotation Based on Weakly Labeled Data
Author(s): Xiaochun Cao; Changqing Zhang; Huazhu Fu; Xiaojie Guo; Qi Tian
Page(s): 1253 - 1265
13) The Application of Visual Saliency Models in Objective Image Quality Assessment: A Statistical Evaluation
Author(s): Wei Zhang; Ali Borji; Zhou Wang; Patrick Le Callet; Hantao Liu
Page(s): 1266 - 1278
14) Salient Band Selection for Hyperspectral Image Classification via Manifold Ranking
Author(s): Qi Wang; Jianzhe Lin; Yuan Yuan
Page(s): 1279 - 1289
15) Guest Editorial Special Section on Learning in Non-(geo)metric Spaces
Author(s): Marcello Pelillo; Edwin R. Hancock; Xuelong Li; Vittorio Murino
Page(s): 1290 - 1293
16) Sparse Coding on Symmetric Positive Definite Manifolds Using Bregman Divergences
Author(s): Mehrtash T. Harandi; Richard Hartley; Brian Lovell; Conrad Sanderson
Page(s): 1294 - 1306
17) Multicriteria Similarity-Based Anomaly Detection Using Pareto Depth Analysis
Author(s): Ko-Jen Hsiao; Kevin S. Xu; Jeff Calder; Alfred O. Hero
Page(s): 1307 - 1321
18) Learning in Variable-Dimensional Spaces
Author(s): Michelangelo Diligenti; Marco Gori; Claudio SaccĂ
Page(s): 1322 - 1332
19) Manifold Learning for Multivariate Variable-Length Sequences With an Application to Similarity Search
Author(s): Shen-Shyang Ho; Peng Dai; Frank Rudzicz
Page(s): 1333 - 1344
20) Constrained Clustering With Imperfect Oracles
Author(s): Xiatian Zhu; Chen Change Loy; Shaogang Gong
Page(s): 1345 - 1357
21) Hierarchical Image Segmentation Using Correlation Clustering
Author(s): Amir Alush; Jacob Goldberger
Page(s): 1358 - 1367
22) Feature Combination and the kNN Framework in Object Classification
Author(s): Jian Hou; Huijun Gao; Qi Xia; Naiming Qi
Page(s): 1368 - 1378
23) Dissimilarity-Based Ensembles for Multiple Instance Learning
Author(s): Veronika Cheplygina; David M. J. Tax; Marco Loog
Page(s): 1379 - 1391
24) Ensemble Manifold Rank Preserving for Acceleration-Based Human Activity Recognition
Author(s): Dapeng Tao; Lianwen Jin; Yuan Yuan; Yang Xue
Page(s): 1392 - 1404
Author(s): Junwei Han; Ling Shao; Nuno Vasconcelos; Jungong Han; Dong Xu
Page(s): 1118 - 1121
2) Manifold Ranking-Based Matrix Factorization for Saliency Detection
Author(s): Dapeng Tao; Jun Cheng; Mingli Song; Xu Lin
Page(s): 1122 - 1134
3) DISC: Deep Image Saliency Computing via Progressive Representation Learning
Author(s): Tianshui Chen; Liang Lin; Lingbo Liu; Xiaonan Luo; Xuelong Li
Page(s): 1135 - 1149
4) Human-Centered Saliency Detection
Author(s): Zhenbao Liu; Xiao Wang; Shuhui Bu
Page(s): 1150 - 1162
5) Cosaliency Detection Based on Intrasaliency Prior Transfer and Deep Intersaliency Mining
Author(s): Dingwen Zhang; Junwei Han; Jungong Han; Ling Shao
Page(s): 1163 - 1176
6) Spatiochromatic Context Modeling for Color Saliency Analysis
Author(s): Jun Zhang; Meng Wang; Shengping Zhang; Xuelong Li; Xindong Wu
Page(s): 1177 - 1189
7) Dual Low-Rank Pursuit: Learning Salient Features for Saliency Detection
Author(s): Congyan Lang; Jiashi Feng; Songhe Feng; Jingdong Wang; Shuicheng Yan
Page(s): 1190 - 1200
8) Improving Visual Saliency Computing With Emotion Intensity
Author(s): Huiying Liu; Min Xu; Jinqiao Wang; Tianrong Rao; Ian Burnett
Page(s): 1201 - 1213
9) Reconciling Saliency and Object Center-Bias Hypotheses in Explaining Free-Viewing Fixations
Author(s): Ali Borji; James Tanner
Page(s): 1214 - 1226
10) Bottom–Up Visual Saliency Estimation With Deep Autoencoder-Based Sparse Reconstruction
Author(s): Chen Xia; Fei Qi; Guangming Shi
Page(s): 1227 - 1240
11) Learning to Predict Sequences of Human Visual Fixations
Author(s): Ming Jiang; Xavier Boix; Gemma Roig; Juan Xu; Luc Van Gool; Qi Zhao
Page(s): 1241 - 1252
12) Saliency-Aware Nonparametric Foreground Annotation Based on Weakly Labeled Data
Author(s): Xiaochun Cao; Changqing Zhang; Huazhu Fu; Xiaojie Guo; Qi Tian
Page(s): 1253 - 1265
13) The Application of Visual Saliency Models in Objective Image Quality Assessment: A Statistical Evaluation
Author(s): Wei Zhang; Ali Borji; Zhou Wang; Patrick Le Callet; Hantao Liu
Page(s): 1266 - 1278
14) Salient Band Selection for Hyperspectral Image Classification via Manifold Ranking
Author(s): Qi Wang; Jianzhe Lin; Yuan Yuan
Page(s): 1279 - 1289
15) Guest Editorial Special Section on Learning in Non-(geo)metric Spaces
Author(s): Marcello Pelillo; Edwin R. Hancock; Xuelong Li; Vittorio Murino
Page(s): 1290 - 1293
16) Sparse Coding on Symmetric Positive Definite Manifolds Using Bregman Divergences
Author(s): Mehrtash T. Harandi; Richard Hartley; Brian Lovell; Conrad Sanderson
Page(s): 1294 - 1306
17) Multicriteria Similarity-Based Anomaly Detection Using Pareto Depth Analysis
Author(s): Ko-Jen Hsiao; Kevin S. Xu; Jeff Calder; Alfred O. Hero
Page(s): 1307 - 1321
18) Learning in Variable-Dimensional Spaces
Author(s): Michelangelo Diligenti; Marco Gori; Claudio SaccĂ
Page(s): 1322 - 1332
19) Manifold Learning for Multivariate Variable-Length Sequences With an Application to Similarity Search
Author(s): Shen-Shyang Ho; Peng Dai; Frank Rudzicz
Page(s): 1333 - 1344
20) Constrained Clustering With Imperfect Oracles
Author(s): Xiatian Zhu; Chen Change Loy; Shaogang Gong
Page(s): 1345 - 1357
21) Hierarchical Image Segmentation Using Correlation Clustering
Author(s): Amir Alush; Jacob Goldberger
Page(s): 1358 - 1367
22) Feature Combination and the kNN Framework in Object Classification
Author(s): Jian Hou; Huijun Gao; Qi Xia; Naiming Qi
Page(s): 1368 - 1378
23) Dissimilarity-Based Ensembles for Multiple Instance Learning
Author(s): Veronika Cheplygina; David M. J. Tax; Marco Loog
Page(s): 1379 - 1391
24) Ensemble Manifold Rank Preserving for Acceleration-Based Human Activity Recognition
Author(s): Dapeng Tao; Lianwen Jin; Yuan Yuan; Yang Xue
Page(s): 1392 - 1404
Labels:
IEEE TNNLS,
journals
Saturday, June 4, 2016
IEEE Transactions on Fuzzy Systems, Volume 24, Issue 3
1) Nonfragile H_{\infty } Fuzzy Filtering With Randomly Occurring Gain Variations and Channel Fadings
Author(s): Sunjie Zhang; Zidong Wang; Derui Ding; Hongli Dong; Fuad E. Alsaadi; Tasawar Hayat
Page(s): 505 - 518
2) Chain and Substitution Rules of Intuitionistic Fuzzy Calculus
Author(s): Qian Lei; Zeshui Xu
Page(s): 519 - 529
3) Extended Fuzzy Logic: Sets and Systems
Author(s): Farnaz Sabahi; Mohammad Reza Akbarzadeh-T
Page(s): 530 - 543
4) Fuzzy-Model-Based Robust H_{\infty } Design of Nonlinear Packetized Networked Control Systems
Author(s): Bin Tang; Shiguo Peng; Yun Zhang
Page(s): 544 - 557
5) Extensions of Atanassov's Intuitionistic Fuzzy Interaction Bonferroni Means and Their Application to Multiple-Attribute Decision Making
Author(s): Yingdong He; Zhen He
Page(s): 558 - 573
6) Evolving Type-2 Fuzzy Classifier
Author(s): Mahardhika Pratama; Jie Lu; Guangquan Zhang
Page(s): 574 - 589
7) Multicriteria Decision Making With Ordinal/Linguistic Intuitionistic Fuzzy Sets For Mobile Apps
Author(s): Ronald R. Yager
Page(s): 590 - 599
8) Improving Linguistic Pairwise Comparison Consistency via Linguistic Discrete Regions
Author(s): Hengshan Zhang; Qinghua Zheng; Ting Liu; Zijiang Yang; Minnan Luo; Yu Qu
Page(s): 600 - 614
9) Law of Large Numbers for Uncertain Random Variables
Author(s): Kai Yao; Jinwu Gao
Page(s): 615 - 621
10) Output Feedback Direct Adaptive Fuzzy Controller Based on Frequency-Domain Methods
Author(s): Krzysztof Wiktorowicz
Page(s): 622 - 634
11) Stability and Stabilization of Takagi–Sugeno Fuzzy Systems via Sampled-Data and State Quantized Controller
Author(s): Yajuan Liu; S. M. Lee
Page(s): 635 - 644
12) Parameterizing the Semantics of Fuzzy Attribute Implications by Systems of Isotone Galois Connections
Author(s): Vilem Vychodil
Page(s): 645 - 660
13) Decentralized Sampled-Data Fuzzy Observer Design for Nonlinear Interconnected Systems
Author(s): Geun Bum Koo; Jin Bae Park; Young Hoon Joo
Page(s): 661 - 674
14) Robust Stability Analysis and Systematic Design of Single-Input Interval Type-2 Fuzzy Logic Controllers
Author(s): Tufan Kumbasar
Page(s): 675 - 694
15) Rough-Set-Theoretic Fuzzy Cues-Based Object Tracking Under Improved Particle Filter Framework
Author(s): Pojala Chiranjeevi; Somnath Sengupta
Page(s): 695 - 707
16) Fuzzy Multiobjective Modeling and Optimization for One-Shot Multiattribute Exchanges With Indivisible Demand
Author(s): Zhong-Zhong Jiang; Zhi-Ping Fan; W. H. Ip; Xiaohong Chen
Page(s): 708 - 723
17) Global Fuzzy Adaptive Hierarchical Path Tracking Control of a Mobile Robot With Experimental Validation
Author(s): Chih-Lyang Hwang; Wei-Li Fang
Page(s): 724 - 740
18) Asymmetric Fuzzy Preference Relations Based on the Generalized Sigmoid Scale and Their Application in Decision Making Involving Risk Appetites
Author(s): Wei Zhou; Zeshui Xu
Page(s): 741 - 756
19) Possibilistic Functional Dependencies and Their Relationship to Possibility Theory
Author(s): Sebastian Link; Henri Prade
Page(s): 757 - 763
Author(s): Sunjie Zhang; Zidong Wang; Derui Ding; Hongli Dong; Fuad E. Alsaadi; Tasawar Hayat
Page(s): 505 - 518
2) Chain and Substitution Rules of Intuitionistic Fuzzy Calculus
Author(s): Qian Lei; Zeshui Xu
Page(s): 519 - 529
3) Extended Fuzzy Logic: Sets and Systems
Author(s): Farnaz Sabahi; Mohammad Reza Akbarzadeh-T
Page(s): 530 - 543
4) Fuzzy-Model-Based Robust H_{\infty } Design of Nonlinear Packetized Networked Control Systems
Author(s): Bin Tang; Shiguo Peng; Yun Zhang
Page(s): 544 - 557
5) Extensions of Atanassov's Intuitionistic Fuzzy Interaction Bonferroni Means and Their Application to Multiple-Attribute Decision Making
Author(s): Yingdong He; Zhen He
Page(s): 558 - 573
6) Evolving Type-2 Fuzzy Classifier
Author(s): Mahardhika Pratama; Jie Lu; Guangquan Zhang
Page(s): 574 - 589
7) Multicriteria Decision Making With Ordinal/Linguistic Intuitionistic Fuzzy Sets For Mobile Apps
Author(s): Ronald R. Yager
Page(s): 590 - 599
8) Improving Linguistic Pairwise Comparison Consistency via Linguistic Discrete Regions
Author(s): Hengshan Zhang; Qinghua Zheng; Ting Liu; Zijiang Yang; Minnan Luo; Yu Qu
Page(s): 600 - 614
9) Law of Large Numbers for Uncertain Random Variables
Author(s): Kai Yao; Jinwu Gao
Page(s): 615 - 621
10) Output Feedback Direct Adaptive Fuzzy Controller Based on Frequency-Domain Methods
Author(s): Krzysztof Wiktorowicz
Page(s): 622 - 634
11) Stability and Stabilization of Takagi–Sugeno Fuzzy Systems via Sampled-Data and State Quantized Controller
Author(s): Yajuan Liu; S. M. Lee
Page(s): 635 - 644
12) Parameterizing the Semantics of Fuzzy Attribute Implications by Systems of Isotone Galois Connections
Author(s): Vilem Vychodil
Page(s): 645 - 660
13) Decentralized Sampled-Data Fuzzy Observer Design for Nonlinear Interconnected Systems
Author(s): Geun Bum Koo; Jin Bae Park; Young Hoon Joo
Page(s): 661 - 674
14) Robust Stability Analysis and Systematic Design of Single-Input Interval Type-2 Fuzzy Logic Controllers
Author(s): Tufan Kumbasar
Page(s): 675 - 694
15) Rough-Set-Theoretic Fuzzy Cues-Based Object Tracking Under Improved Particle Filter Framework
Author(s): Pojala Chiranjeevi; Somnath Sengupta
Page(s): 695 - 707
16) Fuzzy Multiobjective Modeling and Optimization for One-Shot Multiattribute Exchanges With Indivisible Demand
Author(s): Zhong-Zhong Jiang; Zhi-Ping Fan; W. H. Ip; Xiaohong Chen
Page(s): 708 - 723
17) Global Fuzzy Adaptive Hierarchical Path Tracking Control of a Mobile Robot With Experimental Validation
Author(s): Chih-Lyang Hwang; Wei-Li Fang
Page(s): 724 - 740
18) Asymmetric Fuzzy Preference Relations Based on the Generalized Sigmoid Scale and Their Application in Decision Making Involving Risk Appetites
Author(s): Wei Zhou; Zeshui Xu
Page(s): 741 - 756
19) Possibilistic Functional Dependencies and Their Relationship to Possibility Theory
Author(s): Sebastian Link; Henri Prade
Page(s): 757 - 763
Weekly Review 3 June 2016
Some interesting links that I Tweeted about in the last week:
- Tips for building a successful AI platform, from Facebook's director of machine learning: http://www.techrepublic.com/article/facebooks-machine-learning-director-shares-tips-for-building-a-successful-ai-platform/
- Hooray! From 2020, all EU-funded research must be published as open-access. Will more governments follow? http://techcrunch.com/2016/05/27/eu-mandates-open-access-for-all-publicly-funded-research-by-2020/
- Point-and-click bot-building: http://venturebeat.com/2016/05/26/motion-ai-lets-anyone-easily-build-a-bot/
- Most Americans don't trust AI: http://www.digitaltrends.com/cool-tech/ai-system-trust/#:YvuruZwzPeTsCA I suspect that would apply to people in most countries.
- An early prototype system using machine learning to detect potholes for visually-impaired people: http://spectrum.ieee.org/the-human-os/biomedical/devices/pothole-detection-for-the-visually-impaired?utm_source=feedburner&utm_medium=feed&utm_campaign=Feed%3A+IeeeSpectrum+%28IEEE+Spectrum%29&utm_content=FaceBook
- Basically, everyone is pirating papers - open access is the way ahead https://theconversation.com/is-it-piracy-how-students-access-academic-resources-55712
- Personally, I think AI is a long way from the real thing: http://www.cnet.com/news/artificial-intelligence-getting-as-good-as-the-real-thing/
- Communicating technical ideas to non-technical people - I've found the same principles apply in teaching http://www.datasciencecentral.com/profiles/blogs/tips-for-effectively-communicating-complex-ideas-to-non-technical
- Designing for an AI-enhanced experience: http://www.tandemseven.com/blog/designing-for-ai-enhanced-experiences/
- How IBM's Watson can contribute to education: http://www.techinsider.io/how-watson-ai-can-transform-education-2016-5
- When an AI can explain to a fresher how an AI works, I will be worried about my job: http://www.edtechmagazine.com/higher/article/2015/02/artificial-intelligence-and-robotics-slowly-enter-college-classrooms
- 57% of jobs are at risk of being replaced by AI and robots: http://techcrunch.com/2016/05/29/human-obsolescence-are-we-ready-for-an-artificially-intelligent-future/
- Machines are going to take all of our jobs: http://www.neowin.net/news/a-robot-is-about-to-take-over-my-job-then-hes-coming-after-yours
- Recurrent neural networks in TensorFlow: http://www.kdnuggets.com/2016/05/intro-recurrent-networks-tensorflow.html
- Natural language processing for a movie recommendation system: http://techcrunch.com/2016/05/31/this-facebook-bot-will-pick-your-next-movie-for-you/
- How machine learning is transforming parts of every day life: http://www.information-management.com/blogs/big-data-analytics/machine-learning-has-transformed-many-aspects-of-everyday-life-10028943-1.html
- Why we should care about how people interact with machine learning systems: http://www.kdnuggets.com/2016/05/interacting-machine-learning.html
- Why everyone needs to understand machine learning: https://www.weforum.org/agenda/2016/05/why-you-need-to-understand-machine-learning
- The argument that AI will augment, rather than replace, people in the workplace: http://www.techrepublic.com/article/robots-beware-humans-will-still-be-bosses-of-machines-say-davenport-and-kirby-in-new-book/
- How Facebook is using AI to flag offensive images: http://techcrunch.com/2016/05/31/terminating-abuse/
- Who is going to win the race to monetise AI? http://www.cio.com/article/3076154/internet-of-things/the-race-to-monetize-artificial-intelligence-is-on.html
- List of resources for machine learning and data science in R and Python: http://www.datasciencecentral.com/profiles/blogs/hitchhiker-s-guide-to-data-science-machine-learning-r-python
- DARPA is seeking a mathematical framework on the limitations of machine learning: http://nextbigfuture.com/2016/05/darpa-seeks-mathematical-framework-to.html
- Using a social media bot: http://motherboard.vice.com/en_au/read/i-let-a-robot-take-over-my-social-media-for-48-hours
- How SAP is using machine learning to help transition its customers to the cloud: http://www.techrepublic.com/article/sap-invests-in-machine-learning-to-simplify-customer-transition-to-cloud/
- It's far to early to start regulating AI: https://www.technologyreview.com/s/601563/what-to-do-when-a-robot-is-the-guilty-party/
- First example of music produced by Google's AI: http://techcrunch.com/2016/06/01/google-ai-produces-a-melody-that-rivals-the-casio-keyboard-concerts-of-our-youth/
- An article on DeepText, Facebook's text-processing natural language system: http://techcrunch.com/2016/06/01/facebook-deep-text/
- Some more details on Facebook's DeepText: https://code.facebook.com/posts/181565595577955/introducing-deeptext-facebook-s-text-understanding-engine/
- Artificially intelligent headphones. Seriously. http://techcrunch.com/2016/06/01/first-look-lifebeams-artificially-intelligent-headphones-for-that-her-like-workout/
- Which AI company is Elon Musk most scared of? http://www.theverge.com/2016/6/2/11837566/elon-musk-one-ai-company-that-worries-me
- How Bill Gates sees AI as the "holy grail": http://mashable.com/2016/06/01/bill-gates-ai-code-conference/#odjE.UnZcOqc
- On the democratisation of machine learning: http://www.datasciencecentral.com/profiles/blogs/machine-learning-is-dead-long-live-machine-learning
- An overview of logistic regression: http://www.analyticbridge.com/profiles/blogs/making-data-science-accessible-logistic-regression
- More about Project Magenta, Google artistic AI: http://www.informationweek.com/big-data/big-data-analytics/googles-magenta-project-can-machines-be-musicians/a/d-id/1325752?
- A howto on building a deep learning box: http://www.kdnuggets.com/2016/06/build-deep-learning-box.html
- CISCO is planning on using IBM's Watson AI to analyse data from the IoT: http://techcrunch.com/2016/06/02/ibm-cisco-iot/
- Google's AI is the best, according to CEO Sundar Pichai: http://www.informationweek.com/iot/googles-sundar-pichai-our-ai-beats-competitors-ai/a/d-id/1325758
- The "barbell effect" of machine learning - how the benefits of AI will be driven to extreme ends: http://techcrunch.com/2016/06/02/the-barbell-effect-of-machine-learning/
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Saturday, May 28, 2016
IEEE Transactions on Evolutionary Computation, Volume 20, Number 3, June 2016
1) A Modified Ant Colony Optimization Algorithm for Network Coding Resource Minimization
Author(s): Zhaoyuan Wang; Huanlai Xing; Tianrui Li; Yan Yang; Rong Qu; Yi Pan
Page(s): 325 - 342
2) Multifactorial Evolution: Toward Evolutionary Multitasking
Author(s): Abhishek Gupta; Yew-Soon Ong; Liang Feng
Page(s): 343 - 357
3) A Unified Evolutionary Optimization Procedure for Single, Multiple, and Many Objectives
Author(s): Haitham Seada; Kalyanmoy Deb
Page(s): 358 - 369
4) Analysis of Stability, Local Convergence, and Transformation Sensitivity of a Variant of the Particle Swarm Optimization Algorithm
Author(s): Mohammad Reza Bonyadi; Zbigniew Michalewicz
Page(s): 370 - 385
5) Visualization and Performance Metric in Many-Objective Optimization
Author(s): Zhenan He; Gary G. Yen
Page(s): 386 - 402
6) Automatic Component-Wise Design of Multiobjective Evolutionary Algorithms
Author(s): Leonardo C. T. Bezerra; Manuel López-Ibáñez; Thomas Stützle
Page(s): 403 - 417
7) A Sparse Spectral Clustering Framework via Multiobjective Evolutionary Algorithm
Author(s): Juanjuan Luo; Licheng Jiao; Jose A. Lozano
Page(s): 418 - 433
8) The Permutation in a Haystack Problem and the Calculus of Search Landscapes
Author(s): Vincent A. Cicirello
Page(s): 434 - 446
9) Constraint Consensus Mutation-Based Differential Evolution for Constrained Optimization
Author(s): Noha M. Hamza; Daryl L. Essam; Ruhul A. Sarker
Page(s): 447 - 459
10) Computing Nash Equilibria and Evolutionarily Stable States of Evolutionary Games
Author(s): Jiawei Li; Graham Kendall; Robert John
Page(s): 460 - 469
11) The $N$ -Player Trust Game and its Replicator Dynamics
Author(s): Hussein Abbass; Garrison Greenwood; Eleni Petraki
Page(s): 470 - 474
12) Constrained Subproblems in a Decomposition-Based Multiobjective Evolutionary Algorithm
Author(s): Luping Wang; Qingfu Zhang; Aimin Zhou; Maoguo Gong; Licheng Jiao
Page(s): 475 - 480
Author(s): Zhaoyuan Wang; Huanlai Xing; Tianrui Li; Yan Yang; Rong Qu; Yi Pan
Page(s): 325 - 342
2) Multifactorial Evolution: Toward Evolutionary Multitasking
Author(s): Abhishek Gupta; Yew-Soon Ong; Liang Feng
Page(s): 343 - 357
3) A Unified Evolutionary Optimization Procedure for Single, Multiple, and Many Objectives
Author(s): Haitham Seada; Kalyanmoy Deb
Page(s): 358 - 369
4) Analysis of Stability, Local Convergence, and Transformation Sensitivity of a Variant of the Particle Swarm Optimization Algorithm
Author(s): Mohammad Reza Bonyadi; Zbigniew Michalewicz
Page(s): 370 - 385
5) Visualization and Performance Metric in Many-Objective Optimization
Author(s): Zhenan He; Gary G. Yen
Page(s): 386 - 402
6) Automatic Component-Wise Design of Multiobjective Evolutionary Algorithms
Author(s): Leonardo C. T. Bezerra; Manuel López-Ibáñez; Thomas Stützle
Page(s): 403 - 417
7) A Sparse Spectral Clustering Framework via Multiobjective Evolutionary Algorithm
Author(s): Juanjuan Luo; Licheng Jiao; Jose A. Lozano
Page(s): 418 - 433
8) The Permutation in a Haystack Problem and the Calculus of Search Landscapes
Author(s): Vincent A. Cicirello
Page(s): 434 - 446
9) Constraint Consensus Mutation-Based Differential Evolution for Constrained Optimization
Author(s): Noha M. Hamza; Daryl L. Essam; Ruhul A. Sarker
Page(s): 447 - 459
10) Computing Nash Equilibria and Evolutionarily Stable States of Evolutionary Games
Author(s): Jiawei Li; Graham Kendall; Robert John
Page(s): 460 - 469
11) The $N$ -Player Trust Game and its Replicator Dynamics
Author(s): Hussein Abbass; Garrison Greenwood; Eleni Petraki
Page(s): 470 - 474
12) Constrained Subproblems in a Decomposition-Based Multiobjective Evolutionary Algorithm
Author(s): Luping Wang; Qingfu Zhang; Aimin Zhou; Maoguo Gong; Licheng Jiao
Page(s): 475 - 480
Weekly Review 27 May 2016
Some interesting links that I Tweeted about in the last week:
- AI and the rise of the "useless" class: https://www.theguardian.com/technology/2016/may/20/silicon-assassins-condemn-humans-life-useless-artificial-intelligence
- Overview of the applications of IBM's Watson: http://www.extremetech.com/extreme/228877-ibm-watson-amps-up-moogfest-2016-with-ai-infused-programming
- Machine learning is the "automation of automation": http://www.kdnuggets.com/2016/05/explain-machine-learning-software-engineer.html
- The promise of Google's AI: https://www.theguardian.com/technology/2016/may/20/google-ai-machine-learning-skynet-technology
- Google Home means holding conversations with computers - will they use those conversations to make better AI? https://www.technologyreview.com/s/601530/google-thinks-youre-ready-to-converse-with-computers/
- A knowledge of measurement theory is really important: http://www.kdnuggets.com/2016/05/dont-just-assume-data-interval-scale.html See also here: http://computational-intelligence.blogspot.co.nz/2015/03/measurement-theory.html
- China is really going in the wrong direction now. A real shame, I know lots of good people among China's academia: http://www.theguardian.com/world/2016/may/24/academics-china-crackdown-forces-intellectuals-abroad
- Australian robot livestock workers: https://www.newscientist.com/article/2089321-robot-ranchers-monitor-animals-on-giant-australian-farms/?utm_source=NSNS&utm_medium=ILC&utm_campaign=webpush&cmpid=ILC%257CNSNS%257C2016-GLOBAL-webpush-ROBOTRANCHERS
- Google is trying to teach an AI to be artistic: http://www.theverge.com/2016/5/23/11743948/google-artificial-intelligence-magenta-art-music-project
- The (potential) contribution of AI to medicine: http://www.extremetech.com/extreme/228830-the-next-major-advance-in-medicine-will-be-the-use-of-ai
- Some thoughts on language choice for writing a web crawler: http://www.bigdatanews.com/profiles/blogs/which-language-is-better-for-writing-a-web-crawler-php-python-or Last crawler I wrote was in Python.
- Natural language processing and AI in Facebook: http://www.techrepublic.com/article/why-facebook-wants-to-use-ai-to-track-your-conversations-online/
- Facebook is planning on using neural networks for translation: https://www.technologyreview.com/s/601562/facebook-plans-to-boost-its-translations-using-neural-networks-this-year/ That'll need some really, really big neural networks.
- What's good and what's bad about TensorFlow: http://www.kdnuggets.com/2016/05/good-bad-ugly-tensorflow.html
- The disappointment of AI personalisation: http://www.techrepublic.com/article/big-datas-big-disappointment-why-ai-personalization-is-pathetic/
- More than just bots in the intelligent application ecosystem: http://techcrunch.com/2016/05/24/the-intelligent-app-ecosystem-is-more-than-just-bots/
- Machine learning algorithms that learn from fewer examples: https://www.technologyreview.com/s/601551/algorithms-that-learn-with-less-data-could-expand-ais-power/
- Biased data will give you biased models: http://theinstitute.ieee.org/ieee-roundup/opinions/ieee-roundup/bias-in-code-is-a-problem-that-cannot-be-ignored- I used to teach this to my third-year AI class, why don't pros know?
- Why Facebook's AI can't recognise a mirror selfie: http://motherboard.vice.com/en_au/read/why-artificial-intelligence-cant-detect-mirror-selfies
- Terrapattern is a reverse image searching on maps, powered by a convolutional neural network: http://techcrunch.com/2016/05/25/terrapattern-is-a-neural-net-powered-reverse-image-search-for-maps/
- A biased data set will give a biased model, even if the biases are racial/gender/cultural. Why is this still news? http://motherboard.vice.com/en_au/read/weve-already-taught-artificial-intelligence-to-be-racist-sexist
- At least the US government is taking AI seriously. Will others? http://www.geekwire.com/2016/white-house-ai-workshop-focuses-machines-plus-humans-will-affect-government/
- Why Python is such a good match for machine learning: http://www.analyticbridge.com/profiles/blogs/machine-learning-with-python-why-do-they-form-the-best
- Something of a glossary of key machine learning terms: http://www.kdnuggets.com/2016/05/machine-learning-key-terms-explained.html
- Amazon is expanding its cloud-based machine learning offerings: http://www.bloomberg.com/news/articles/2016-05-26/amazon-to-battle-google-with-new-cloud-service-for-ai-software
Labels:
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Friday, May 20, 2016
Weekly Review 20 May 2016
Some interesting links that I Tweeted about in the last week:
- Three skills data scientists need: http://www.kdnuggets.com/2016/05/practical-skills-practical-data-scientists-need.html
- A pathway to malevolent AI: http://www.techrepublic.com/article/creating-malevolent-ai-a-manual/
- What to do if ANN error increases: http://www.kdnuggets.com/2016/05/troubleshooting-neural-network-error-increase.html
- Deep learning ANN in self-driving cars: http://www.informationweek.com/mobile/mobile-devices/nvidia-car-learns-to-drive-by-watching-humans/d/d-id/1325460?
- Reproducing van Gogh's painting style with deep learning neural networks: https://www.technologyreview.com/s/601424/algorithm-clones-van-goghs-artistic-style-and-pastes-it-onto-other-images-movies/
- Machine learning system that gives the conditions for growing new types of crystals: http://futurism.com/machine-learning-uses-human-failures-to-make-crystals/
- Do computers in classrooms lower exam performance? http://www.theregister.co.uk/2016/05/12/mit_study_finds_students_assisted_by_computers_do_worse_in_exams/
- Speeding-up neural networks by doing fewer multiplications: http://arxiv.org/abs/1510.03009
- On de-coupling peer review from specific journals: https://www.insidehighered.com/views/2016/05/16/why-not-make-academic-journal-acceptance-portable-essay
- More about machine learning in materials science: http://nextbigfuture.com/2016/05/machine-learning-techniques-could.html
- Perhaps open review would reduce the tendency that anonymous reviewers have to be dicks: https://www.insidehighered.com/views/2016/05/16/open-peer-review-journal-articles-offers-significant-benefits-essay
- How long before these AI are writing student essays-for-hire? http://www.theverge.com/2016/5/15/11678142/google-ai-writes-fiction-natural-language-neural-network
- First materials science, now an AI does physics: http://www.eurekalert.org/pub_releases/2016-05/anu-air051316.php?utm_source=dlvr.it&utm_medium=twitter
- This article seems to be confusing Elm the programming language with ELM as in Extreme Learning Machines: http://www.valuewalk.com/2016/04/future-machine-learning/
- An introduction to natural language processing, with some useful links to information and libraries: http://blog.algorithmia.com/2016/04/introduction-to-natural-language-processing/
- Badder than a bad thing that's very, very bad: http://motherboard.vice.com/en_au/read/elsevier-buys-ssrn
- I've certainly encountered my share of narcissists in academia: http://www.theguardian.com/education/2016/may/17/university-research-academic-bragging-grants
- The case for randomly accepting borderline papers: http://www.kdnuggets.com/2016/05/embrace-random-acceptance-borderline-papers.html
- How and why machine learning isn't enough in financial fraud detection: http://dataconomy.com/machine-learning-fraud-artificial-intelligence-isnt-enough/
- Semi-supervised reinforcement learning: http://www.kdnuggets.com/2016/05/intro-semi-supervised-reinforcement-learning.html
- Some resources on deep learning: http://www.datasciencecentral.com/profiles/blogs/deep-learning-definition-resources-comparison-with-machine-learni
- How can we control an AI if nobody understands it? http://techcrunch.com/2016/05/16/how-can-we-control-intelligent-systems-no-one-fully-understands/
- Twitter has developed an AI that can recognise what is happening in videos: https://www.technologyreview.com/s/601284/twitters-artificial-intelligence-knows-whats-happening-in-live-video-clips/
- Seems like GoButler is offering a natural-language processing service for hire: http://techcrunch.com/2016/05/16/angel-ai/
- Intelligent chatbots for banking customer service: https://www.technologyreview.com/s/601418/do-your-banking-with-a-chatbot/
- Will machine learning bring about the end of coding? http://www.wired.com/2016/05/the-end-of-code/
- Google has created its own ASIC chips to implement deep neural networks: http://www.wired.com/2016/05/google-tpu-custom-chips/
- Claims that Google's deep neural network chip could advance Moore's law by 7 years: http://www.pcworld.com/article/3072256/google-io/googles-tensor-processing-unit-said-to-advance-moores-law-seven-years-into-the-future.html#comments
- 12 ways AI could disrupt the senior executives of a corporation: http://www.informationweek.com/big-data/12-ways-ai-will-disrupt-your-c-suite/d/d-id/1325557?
- An overview of word2vec, encoding words to vectors: http://www.kdnuggets.com/2016/05/amazing-power-word-vectors.html
- List of lists of resources on machine learning, deep learning, and natural language processing: http://www.datasciencecentral.com/profiles/blogs/curated-lists-of-data-science-machine-learning-deep-learning-and
- A neural-network based approach for finding a photo that most matches a sketch: https://www.newscientist.com/article/mg23030742-600-scan-your-doodles-to-find-the-perfect-matching-photo-online/
- Yahoo's meme-GIF making AI: http://motherboard.vice.com/en_au/read/these-fire-gifs-were-made-by-artificial-intelligence-yahoo
- Some niche machine learning software projects: http://www.kdnuggets.com/2016/05/five-machine-learning-projects-cant-overlook.html
- Google's Awareness API: http://www.theverge.com/2016/5/19/11712608/android-awareness-api-google-io-2016
- Description of 3 clustering algorithms, k-means, EM clustering and Affinity Propagation: https://www.toptal.com/machine-learning/clustering-algorithms
- Some supposed progress towards artificial general intelligence: http://nextbigfuture.com/2016/05/vicarious-will-show-off-their-progress.html
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Neural Networks Volume 79, Pages: 1-150, July 2016
1. Regular expressions for decoding of neural network outputs
Authors: Tobias StrauĂź, Gundram Leifert, Tobias GrĂĽning, Roger Labahn
Pages: 1-11
2. When are two multi-layer cellular neural networks the same?
Authors: Jung-Chao Ban, Chih-Hung Chang
Pages: 12-19
3. Robust mixture of experts modeling using the t image distribution
Authors: F. Chamroukhi
Pages: 20-36
4. Engineering neural systems for high-level problem solving
Authors: Jared Sylvester, James Reggia
Pages: 37-52
5. Effect of network architecture on burst and spike synchronization in a scale-free network of bursting neurons
Authors: Sang-Yoon Kim, Woochang Lim
Pages: 53-77
6. Dynamical analysis of contrastive divergence learning: Restricted Boltzmann machines with Gaussian visible units
Authors: Ryo Karakida, Masato Okada, Shun-ichi Amari
Pages: 78-87
7. Pattern recognition for electroencephalographic signals based on continuous neural networks
M. Alfaro-Ponce, A. ArgĂĽelles, I. Chairez
Pages: 88-96
8. Improvements on image v-Twin Support Vector Machine
Authors: Reshma Khemchandani, Pooja Saigal, Suresh Chandra
Pages: 97-107
9. Global exponential stability of complex-valued neural networks with both time-varying delays and impulsive effects
Authors: Qiankun Song, Huan Yan, Zhenjiang Zhao, Yurong Liu
Pages: 108-116
10. Multistability analysis of a general class of recurrent neural networks with non-monotonic activation functions and time-varying delays
Authors: Peng Liu, Zhigang Zeng, Jun Wang
Pages: 117-127
11. FPGA implementation of neuro-fuzzy system with improved PSO learning
Authors: Cihan Karakuzu, Fuat Karakaya, Mehmet Ali Çavuşlu
Pages: 128-140
12. Interplay between non-NMDA and NMDA receptor activation during oscillatory wave propagation: Analyses of caffeine-induced oscillations in the visual cortex of rats
Authors: Hiroshi Yoshimura, Tokio Sugai, Nobuo Kato, Takashi Tominaga, Yoko Tominaga, Takahiro Hasegawa, Chenjuan Yao, Tetsuya Akamatsu
Pages: 141-149
Authors: Tobias StrauĂź, Gundram Leifert, Tobias GrĂĽning, Roger Labahn
Pages: 1-11
2. When are two multi-layer cellular neural networks the same?
Authors: Jung-Chao Ban, Chih-Hung Chang
Pages: 12-19
3. Robust mixture of experts modeling using the t image distribution
Authors: F. Chamroukhi
Pages: 20-36
4. Engineering neural systems for high-level problem solving
Authors: Jared Sylvester, James Reggia
Pages: 37-52
5. Effect of network architecture on burst and spike synchronization in a scale-free network of bursting neurons
Authors: Sang-Yoon Kim, Woochang Lim
Pages: 53-77
6. Dynamical analysis of contrastive divergence learning: Restricted Boltzmann machines with Gaussian visible units
Authors: Ryo Karakida, Masato Okada, Shun-ichi Amari
Pages: 78-87
7. Pattern recognition for electroencephalographic signals based on continuous neural networks
M. Alfaro-Ponce, A. ArgĂĽelles, I. Chairez
Pages: 88-96
8. Improvements on image v-Twin Support Vector Machine
Authors: Reshma Khemchandani, Pooja Saigal, Suresh Chandra
Pages: 97-107
9. Global exponential stability of complex-valued neural networks with both time-varying delays and impulsive effects
Authors: Qiankun Song, Huan Yan, Zhenjiang Zhao, Yurong Liu
Pages: 108-116
10. Multistability analysis of a general class of recurrent neural networks with non-monotonic activation functions and time-varying delays
Authors: Peng Liu, Zhigang Zeng, Jun Wang
Pages: 117-127
11. FPGA implementation of neuro-fuzzy system with improved PSO learning
Authors: Cihan Karakuzu, Fuat Karakaya, Mehmet Ali Çavuşlu
Pages: 128-140
12. Interplay between non-NMDA and NMDA receptor activation during oscillatory wave propagation: Analyses of caffeine-induced oscillations in the visual cortex of rats
Authors: Hiroshi Yoshimura, Tokio Sugai, Nobuo Kato, Takashi Tominaga, Yoko Tominaga, Takahiro Hasegawa, Chenjuan Yao, Tetsuya Akamatsu
Pages: 141-149
Labels:
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Saturday, May 14, 2016
Weekly Review 13 May 2016
Some interesting links that I Tweeted about in the last week:
- DeepMind claims is has good privacy protection so should be trusted with data on millions of patient records: https://www.theguardian.com/technology/2016/may/06/deepmind-best-privacy-infrastructure-handling-nhs-data-says-co-founder
- I suspect my daughter's generation will be the last to pay their way through university by flipping burgers: http://www.techrepublic.com/article/ai-will-destroy-entry-level-jobs-but-lead-to-a-basic-income-for-all/
- I liked to implement algorithms myself when I was a post-grad: http://www.kdnuggets.com/2016/05/implement-machine-learning-algorithms-scratch.html Don't have time to do that kind of thing now.
- Facebook is building an AI that builds AIs: http://www.wired.com/2016/05/facebook-trying-create-ai-can-create-ai/
- Is "genetics-inspired multi-AI approach" a fancy name for an evolutionary algorithm? http://www.theregister.co.uk/2016/05/06/ebay_buys_expertmaker/
- Predicting the winners of horse races with swarm intelligence: http://www.techrepublic.com/article/swarm-ai-predicts-the-2016-kentucky-derby/
- Machine learning for personal stylists: http://www.computerworld.com/article/3067264/artificial-intelligence/at-stitch-fix-data-scientists-and-ai-become-personal-stylists.html
- Machine learning in marketing: http://www.martechadvisor.com/articles/mobile-app-dev-marketing/marketing-in-a-digital-world-machine-learning-is-upping-innovation-and-agility/
- Why AI is going to disappear, become invisible: http://techcrunch.com/2016/05/07/the-next-ai-is-no-ai/
- An AI for a teaching assistant: http://www.wsj.com/articles/if-your-teacher-sounds-like-a-robot-you-might-be-on-to-something-1462546621
- Preparing a business to include AI: http://www.techrepublic.com/article/how-to-prepare-your-business-to-include-ai/
- Why we may need an ethics framework for AI: http://www.theguardian.com/commentisfree/2016/may/08/the-guardian-view-on-artificial-intelligence-look-out-its-ahead-of-you
- Using machine learning to suggest citations for your research writing: http://techcrunch.com/2016/05/08/helix-conducts-research-as-you-write/
- Categorising the importance of messages using machine learning: http://techcrunch.com/2016/05/08/deep-focus-saves-you-from-being-inundated-by-unimportant-messages/
- How open source projects are moving machine learning forwards: https://www.linux.com/news/open-source-projects-are-transforming-machine-learning-and-ai
- Ambient intelligence - AI everywhere: http://techcrunch.com/2016/05/07/the-next-stop-on-the-road-to-revolution-is-ambient-intelligence/
- Proof-reading. It's really, really important. Of all the words they could mis-spell... https://www.insidehighered.com/quicktakes/2016/05/09/unfortunate-typo-tcu-commencement-program
- Open Network Insight uses machine learning for network security: http://www.datanami.com/2016/05/09/oni-may-best-hope-cyber-security-now/
- Deep learning in Python with the Keras library: http://machinelearningmastery.com/introduction-python-deep-learning-library-keras/
- Interpreting radiological images with machine learning: http://techcrunch.com/2016/05/09/behold-ai-launches-artificially-intelligent-medical-software-to-find-abnormalities-faster/ IIRC David Fogel did this kind of thing around 1993.
- Some pros and cons of chatbots: http://www.kdnuggets.com/2016/05/ai-chatbots-when-if.html
- Facebook's FBLearner Flow machine learning platform: http://venturebeat.com/2016/05/09/facebook-details-its-company-wide-machine-learning-platform-fblearner-flow/
- Using logistic regression and maximum entropy in Python: http://ataspinar.com/2016/05/07/regression-logistic-regression-and-maximum-entropy-part-2-code-examples/
- A machine learning based stock trading app: https://www.techinasia.com/8-securities-stock-trading-virtual-broker
- How to install and run TensorFlow on a Windows machine: http://www.netinstructions.com/how-to-install-and-run-tensorflow-on-a-windows-pc/
- The coming disruption from intelligent bots: http://www.forbes.com/sites/moorinsights/2016/05/05/rise-of-the-machines-part-2-artificial-intelligence-and-bots-promise-to-disrupt/#15ea457a7082
- How to become a good machine learning engineer: https://www.quora.com/How-can-one-become-a-good-machine-learning-engineer/answer/Nikhil-Dandekar
- A bit of context for AI: What humans need to learn about machine learning: http://www.computerworld.com/article/3067924/artificial-intelligence/what-humans-need-to-learn-about-machine-learning.html
- It's not coding, it's understanding the problem and designing a solution that's important: http://techcrunch.com/2016/05/10/please-dont-learn-to-code/
- Three skills every developer needs, according to Joel Spolsky: http://www.techrepublic.com/article/joel-spolsky-the-three-skills-every-software-developer-should-learn/
- Deep learning is definitely going to kill off jobs: http://www.techrepublic.com/article/ai-pioneer-ai-will-definitely-kill-jobs-but-thats-ok/
- IBM's Watson is being applied to cyber-security: http://www.techrepublic.com/article/ibm-watson-takes-on-cybercrime-with-new-cloud-based-cybersecurity-technology/
- Data mining can produce racist results, if the data being mined is influenced by racist policies: http://www.computerworld.com/article/3068622/internet/amazon-prime-and-the-racist-algorithms.html
- How AI is helping lawyers: http://www.fastcompany.com/3059725/how-ai-and-crowdsourcing-are-remaking-the-legal-profession
- Future trends in machine learning: http://www.geekwire.com/2016/future-machine-learning-5-trends-watch-around-algorithms-cloud-iot-big-data/
- Amazon has open-sourced it's deep learning software: http://venturebeat.com/2016/05/11/amazon-open-sources-its-own-deep-learning-software-dsstne/ Said to be 2x speed of TensorFlow: http://siliconangle.com/blog/2016/05/11/amazon-says-its-new-deep-learning-library-is-2x-faster-than-googles/
- Is the pressure to publish more papers, driving down the quality of those papers? http://www.nature.com/news/the-pressure-to-publish-pushes-down-quality-1.19887
- How long before we see deep learning on a quantum computer? Training ANN is a multi-parameter optimisation problem http://www.gizmag.com/quantum-computer-processor-walk-algorithm/43263/
- On the creativity of deep learning neural networks: http://www.kdnuggets.com/2016/05/deep-neural-networks-creative-deep-learning-art.html
- Why machine learning and python go together so well: http://www.analyticbridge.com/profiles/blogs/machine-learning-with-python-why-do-they-form-the-best
- The current state of neuromorphic chips: http://www.kdnuggets.com/2016/05/deep-learning-neuromorphic-chips.html
- Overview of Markov chains: http://www.analyticbridge.com/profiles/blogs/making-data-science-accessible-markov-chains
- Neural networks in JavaScript: http://www.kdnuggets.com/2016/05/implementing-neural-networks-javascript.html
- Why AI is the most important technology of today: http://techemergence.com/why-is-ai-todays-most-important-technology/
- The uses of AI in the enterprise: http://techcrunch.com/2016/05/12/clarifying-the-uses-of-artificial-intelligence-in-the-enterprise/
- Google has open-sourced their natural-language processing toolbox: http://siliconangle.com/blog/2016/05/12/meet-parsey-mcparseface-googles-new-open-source-language-understanding-tool/ Best. Name. Ever!
- Apple and Google competing in the mobile machine learning area: http://memeburn.com/2016/05/apple-googles-mobile-machine-learning-race/
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Friday, May 13, 2016
Neural Networks, Volume 78 , Pages 1-120, June 2016
Special Issue on "Neural Network Learning in Big Data", Edited by Asim Roy, Nikola Kasabov, Irwin King and Kumar Venayagamoorthy
1. Evolving spatio-temporal data machines based on the NeuCube neuromorphic framework: Design methodology and selected applications
Author(s): Nikola Kasabov, Nathan Matthew Scott, Enmei Tu, Stefan Marks, Neelava Sengupta, Elisa Capecci, Muhaini Othman, Maryam Gholami Doborjeh, Norhanifah Murli, Reggio Hartono, Josafath Israel Espinosa-Ramos, Lei Zhou, Fahad Bashir Alvi, Grace Wang, Denise Taylor, Valery Feigin, Sergei Gulyaev, Mahmoud Mahmoud, Zeng-Guang Hou, Jie Yang
Pages: 1-14
2. Noise-enhanced convolutional neural networks
Author(s): Kartik Audhkhasi, Osonde Osoba, Bart Kosko
Pages: 15-23
3. Hadoop neural network for parallel and distributed feature selection
Author(s): Victoria J. Hodge, Simon O’Keefe, Jim Austin
Pages: 24-35
4. A new Growing Neural Gas for clustering data streams
Author(s): Mohammed Ghesmoune, Mustapha Lebbah, Hanene Azzag
Pages: 36-50
5. Scalable learning method for feedforward neural networks using minimal-enclosing-ball approximation
Author(s): Jun Wang, Zhaohong Deng, Xiaoqing Luo, Yizhang Jiang, Shitong Wang
Pages: 51-64
6. A decentralized training algorithm for Echo State Networks in distributed big data applications
Author(s): Simone Scardapane, Dianhui Wang, Massimo Panella
Pages: 65-74
7. Smart sampling and incremental function learning for very large high dimensional data
Author(s): Diego G. Loyola R, Mattia Pedergnana, Sebastián Gimeno GarcĂa
Pages: 75-87
8. Least square neural network model of the crude oil blending process
Author(s): José de Jesús Rubio
Pages: 88-96
9. Machine learning based sample extraction for automatic speech recognition using dialectal Assamese speech
Author(s): Swapna Agarwalla, Kandarpa Kumar Sarma
Pages: 97-111
10. Learning to decode human emotions with Echo State Networks
Author(s): Lachezar Bozhkov, Petia Koprinkova-Hristova, Petia Georgieva
Pages: 112-119
1. Evolving spatio-temporal data machines based on the NeuCube neuromorphic framework: Design methodology and selected applications
Author(s): Nikola Kasabov, Nathan Matthew Scott, Enmei Tu, Stefan Marks, Neelava Sengupta, Elisa Capecci, Muhaini Othman, Maryam Gholami Doborjeh, Norhanifah Murli, Reggio Hartono, Josafath Israel Espinosa-Ramos, Lei Zhou, Fahad Bashir Alvi, Grace Wang, Denise Taylor, Valery Feigin, Sergei Gulyaev, Mahmoud Mahmoud, Zeng-Guang Hou, Jie Yang
Pages: 1-14
2. Noise-enhanced convolutional neural networks
Author(s): Kartik Audhkhasi, Osonde Osoba, Bart Kosko
Pages: 15-23
3. Hadoop neural network for parallel and distributed feature selection
Author(s): Victoria J. Hodge, Simon O’Keefe, Jim Austin
Pages: 24-35
4. A new Growing Neural Gas for clustering data streams
Author(s): Mohammed Ghesmoune, Mustapha Lebbah, Hanene Azzag
Pages: 36-50
5. Scalable learning method for feedforward neural networks using minimal-enclosing-ball approximation
Author(s): Jun Wang, Zhaohong Deng, Xiaoqing Luo, Yizhang Jiang, Shitong Wang
Pages: 51-64
6. A decentralized training algorithm for Echo State Networks in distributed big data applications
Author(s): Simone Scardapane, Dianhui Wang, Massimo Panella
Pages: 65-74
7. Smart sampling and incremental function learning for very large high dimensional data
Author(s): Diego G. Loyola R, Mattia Pedergnana, Sebastián Gimeno GarcĂa
Pages: 75-87
8. Least square neural network model of the crude oil blending process
Author(s): José de Jesús Rubio
Pages: 88-96
9. Machine learning based sample extraction for automatic speech recognition using dialectal Assamese speech
Author(s): Swapna Agarwalla, Kandarpa Kumar Sarma
Pages: 97-111
10. Learning to decode human emotions with Echo State Networks
Author(s): Lachezar Bozhkov, Petia Koprinkova-Hristova, Petia Georgieva
Pages: 112-119
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Saturday, May 7, 2016
Weekly Review 6 May 2016
Some interesting links that I Tweeted about in the last week:
- Google DeepMind has been given access to records on 1.6M British patients: http://www.theregister.co.uk/2016/04/29/google_given_access_to_reams_of_confidential_patient_information/
- Mark Zuckerberg says machine learning will exceed human performance in speech & image recognition in 5-10 years: http://www.datanami.com/2016/04/29/ai-surpass-human-perception-5-10-years-zuckerberg-says/
- Do deep learning image processing systems really see like humans do? http://motherboard.vice.com/en_au/read/computers-might-just-see-like-humans-after-all-vision-deep-learning-neural-networks
- Top ten programming languages for (retaining) employment: http://www.informationweek.com/devops/programming-languages/10-programming-languages-that-will-keep-you-employed-/d/d-id/1325314
- Identifying heart attacks with AI: http://www.huffingtonpost.com/abhinav-sharma/can-artificial-intelligen_2_b_9798328.html
- Machine learning at Facebook-goal of one AI agent per user: http://fortune.com/facebook-machine-learning/
- Princeton's professors CV of failure: http://www.theguardian.com/education/2016/apr/30/cv-of-failures-princeton-professor-publishes-resume-of-his-career-lows The lesson here seems to be persistence is important, but so is luck.
- The arguments in favour of journal paywalls just don't hold water: http://www.slate.com/articles/health_and_science/science/2016/04/science_magazine_can_t_defend_its_flawed_business_model.html
- Why business intelligence tools need statistics (and actual intelligence): http://www.theregister.co.uk/2016/05/02/stats_the_problem_with_bi/
- Qualcomm is releasing a SDK for its deep learning platform: http://www.theverge.com/2016/5/2/11538122/qualcomm-deep-learning-sdk-zeroth
- Networking for data scientists: http://www.kdnuggets.com/2016/05/how-network-build-personal-brand-data-science.html Same principles apply to networking for computational intelligence researchers
- AI in financial trading: http://www.euromoneythoughtleadership.com/ghostsinthemachine/
- Infosys has developed a system using AI for knowledge management: http://techcrunch.com/2016/04/28/new-infosys-ai-tool-could-change-the-way-companies-maintain-complex-systems/
- How long to true AI? http://dataconomy.com/far-away-inventing-true/ Time to re-read my copy of Kurzweil's The Age of Intelligent Machines
- Recent surveys of evolutionary algorithms: http://cis.ieee.org/index.php?option=com_content&view=article&id=557:the-latest-surveys-of-evolutionary-algorithms-updated-3&catid=17:e-newsletter-news-a-announcements
- Is Uber planning to use machine learning to eliminate surge pricing? http://www.npr.org/sections/alltechconsidered/2016/05/03/476513775/uber-plans-to-kill-surge-pricing-though-drivers-say-it-makes-job-worth-it
- An overview http://techemergence.com/elon-musks-ai-gym-lets-you-develop-and-train-ai-algorithms/ of the Open "AI Gym" https://gym.openai.com/ for testing reinforcement learning algorithms.
- The US White House is running workshops to consider the future implications of AI: https://www.whitehouse.gov/blog/2016/05/03/preparing-future-artificial-intelligence
- Quantizing deep learning neural networks in TensorFlow: http://www.kdnuggets.com/2016/05/how-quantize-neural-networks-tensorflow.html
- Learning Python for data science: http://www.datasciencecentral.com/profiles/blogs/the-guide-to-learning-python-for-data-science-2
- Machine learning and big data in credit card companies: http://www.datanami.com/2016/05/03/credit-card-companies-evolving-big-data/
- This. This is why I will not review any paper for any Elsevier journal. They will not profit from my free labour: https://torrentfreak.com/elsevier-complaint-shuts-down-sci-hub-domain-name-160504/
- AI in medicine is coming: http://m.nzherald.co.nz/technology/news/article.cfm?c_id=5&objectid=11634284
- Art critics do not like art produced by AI: https://www.theguardian.com/science/2016/may/06/does-an-ai-need-to-make-love-to-rembrandts-girlfriend-to-make-art
- Can machine learning make us more beautiful? http://dataconomy.com/better-botox-beauty-industry-get-ai-makeover/
- Apparently AI is still too stupid to pose an existential threat to humans: http://www.techrepublic.com/article/microsoft-research-chief-ai-is-still-too-stupid-to-wipe-us-out-and-will-be-for-decades/
- User behaviour analysis using AI is a growing trend in cyber-security: http://www.darkreading.com/threat-intelligence/silicon-and-artificial-intelligence-the-foundation-of-next-gen-data-security/a/d-id/1325401
- I put more stock in Adam Coates' opinions on the dangers of AI than Stephen Hawking's: http://www.informationweek.com/big-data/big-data-analytics/artificial-intelligence-dont-fear-it-embrace-it/d/d-id/1325391
- Viv the Siri killer: https://www.technologyreview.com/s/601401/siri-killer-viv-faces-an-uphill-battle/
- Researchers open to other disciplines produce better research: https://www.insidehighered.com/news/2016/05/06/new-paper-suggests-open-minded-researchers-produce-higher-quality-research Working with ecologists made me a better researcher.
- AI in staff recruitment: http://www.techrepublic.com/article/how-ai-can-help-companies-hire-and-retain-the-best-employees/
- Are postdocs actually harmful to researchers' careers? https://www.insidehighered.com/news/2016/05/06/study-graduate-students-may-take-unnecessary-postdocs
- How to improve customer experience with AI: http://www.cmswire.com/customer-experience/3-ways-to-bring-artificial-intelligence-to-your-customer-experience/
- Teaching deep learning ANN to be more "conversational"a by training them on romance novels: https://www.buzzfeed.com/alexkantrowitz/googles-artificial-intelligence-engine-reads-romance-novels?utm_term=.hyZr7QWEl#.dfPM42YKG
- An argument that computers do not either learn nor predict: http://techcrunch.com/2016/05/05/only-humans-not-computers-can-learn-or-predict/
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Monday, May 2, 2016
IEEE Transactions on Neural Networks and Learning Systems; Volume 27, Issue 5, May 2016
1. Storing Sequencies in Binary Tournament-Based Neural Networks
Authors: Xiaoran Jiang; Vincent Gripon; Claude Berrou; Michael Rabbat
Pages: 913 - 925
2. Data Generators for Learning Systems Based on RBF Networks
Author: Marko Robnik-Ĺ ikonja
Pages: 926 - 938
3. A Novel Framework for Learning Geometry-Aware Kernels
Authors: Binbin Pan ; Wen-Sheng Chen ; Chen Xu ; Bo Chen
Pages: 939 - 951
4. Hybrid Sampling-Based Clustering Ensemble With Global and Local Constitutions
Authors: Yun Yang; Jianmin Jiang
Pages: 952 - 965
5. The Proximal Trajectory Algorithm in SVM Cross Validation
Authors: Annabella Astorino; Antonio Fuduli
Pages: 966 - 977
6. MLPNN Training via a Multiobjective Optimization of Training Error and Stochastic Sensitivity
Authors: Daniel S. Yeung; Jin-Cheng Li; Wing W.Y. Ng; Patrick P.K. Chan
Pages: 978 - 992
7. Generalization Performance of Regularized Ranking with Multiscale Kernels
Authors: Yicong Zhou; Hong Chen; Rushi Lan; Zhibin Pan
Pages: 993 - 1002
8. A Maximum Margin Approach for Semisupervised Ordinal Regression Clustering
Authors: Yanshan Xiao; Bo Liu; Zhifeng Hao
Pages: 1003 - 1019
9. Learning Discriminative Stein Kernel for SPD Matrices and Its Applications
Authors: Jianjia Zhang; Lei Wang; Luping Zhou; Wanqing Li
Pages: 1020 - 1033
10. Probabilistic Slow Features for Behavior Analysis
Authors: Lazaros Zafeiriou; Himalis A. Nicolaou; Stefanos Zafeiriou; Symeon Nikitidis; Maja Pantic
Pages: 1034 - 1048
11. Improper Complex-Valued Bhattacharyya Distance
Authors: Arash Mohammadi; Konstantinos N. Plataniotis
Pages: 1049 - 1064
12. A New Distance Metric for Unsupervised Learning of Categorical Data
Authors: Hong Jia; Yiu-ming Cheung; Jiming Liu
Pages: 1065 - 1079
13. Integrated Low-Rank-Based Discriminative Feature Learning for Recognition
Authors: Pan Zhou; Zhouchen Lin; Chao Zhang
Pages: 1080 - 1093
14. A Nearest Neighbor Classifier Employing Critical Boundary Vectors for Efficient On-Chip Template Reduction
Authors: Wenjun Xia; Yoshio Mita; Tadashi Shibata
Pages: 1094 - 1107
15. Tree Ensembles on the Induced Discrete Space
Author: Olcay Taner Yıldız
Pages: 1108 - 1113
Authors: Xiaoran Jiang; Vincent Gripon; Claude Berrou; Michael Rabbat
Pages: 913 - 925
2. Data Generators for Learning Systems Based on RBF Networks
Author: Marko Robnik-Ĺ ikonja
Pages: 926 - 938
3. A Novel Framework for Learning Geometry-Aware Kernels
Authors: Binbin Pan ; Wen-Sheng Chen ; Chen Xu ; Bo Chen
Pages: 939 - 951
4. Hybrid Sampling-Based Clustering Ensemble With Global and Local Constitutions
Authors: Yun Yang; Jianmin Jiang
Pages: 952 - 965
5. The Proximal Trajectory Algorithm in SVM Cross Validation
Authors: Annabella Astorino; Antonio Fuduli
Pages: 966 - 977
6. MLPNN Training via a Multiobjective Optimization of Training Error and Stochastic Sensitivity
Authors: Daniel S. Yeung; Jin-Cheng Li; Wing W.Y. Ng; Patrick P.K. Chan
Pages: 978 - 992
7. Generalization Performance of Regularized Ranking with Multiscale Kernels
Authors: Yicong Zhou; Hong Chen; Rushi Lan; Zhibin Pan
Pages: 993 - 1002
8. A Maximum Margin Approach for Semisupervised Ordinal Regression Clustering
Authors: Yanshan Xiao; Bo Liu; Zhifeng Hao
Pages: 1003 - 1019
9. Learning Discriminative Stein Kernel for SPD Matrices and Its Applications
Authors: Jianjia Zhang; Lei Wang; Luping Zhou; Wanqing Li
Pages: 1020 - 1033
10. Probabilistic Slow Features for Behavior Analysis
Authors: Lazaros Zafeiriou; Himalis A. Nicolaou; Stefanos Zafeiriou; Symeon Nikitidis; Maja Pantic
Pages: 1034 - 1048
11. Improper Complex-Valued Bhattacharyya Distance
Authors: Arash Mohammadi; Konstantinos N. Plataniotis
Pages: 1049 - 1064
12. A New Distance Metric for Unsupervised Learning of Categorical Data
Authors: Hong Jia; Yiu-ming Cheung; Jiming Liu
Pages: 1065 - 1079
13. Integrated Low-Rank-Based Discriminative Feature Learning for Recognition
Authors: Pan Zhou; Zhouchen Lin; Chao Zhang
Pages: 1080 - 1093
14. A Nearest Neighbor Classifier Employing Critical Boundary Vectors for Efficient On-Chip Template Reduction
Authors: Wenjun Xia; Yoshio Mita; Tadashi Shibata
Pages: 1094 - 1107
15. Tree Ensembles on the Induced Discrete Space
Author: Olcay Taner Yıldız
Pages: 1108 - 1113
Labels:
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Friday, April 29, 2016
Weekly Review 29 April 2016
Some interesting links that I Tweeted about in the last week:
- So they're going to have a tournament for AI Doom-bots: http://www.theverge.com/2016/4/22/11486164/ai-visual-doom-competition-cig-2016
- Deep learning vs SVM vs random forest - when is deep learning best? http://www.kdnuggets.com/2016/04/deep-learning-vs-svm-random-forest.html
- Seems to be a degree of AI involved in detecting scam emails: http://spectrum.ieee.org/telecom/security/fighting-todays-targeted-email-scams
- Brief intro to unstructured data mining, especially text mining: https://icrunchdatanews.com/unstructured-data-mining-primer/?utm_source=twitter&utm_medium=social&utm_campaign=SocialWarfare
- Predictive modelling of police misconduct: https://www.technologyreview.com/s/601003/police-will-soon-be-watched-by-algorithms-that-try-to-predict-misconduct-is-that-a-good/?utm_content=buffera219f&utm_medium=social&utm_source=twitter.com&utm_campaign=buffer
- Predicting heart failure with deep learning-wonder if it could have saved my father? https://blogs.nvidia.com/blog/2016/04/11/predict-heart-failure/
- We won't lose our jobs to robots/AI, but we will have to work beside them: http://www.computerworld.com/article/3060096/robotics/get-ready-for-your-new-co-worker-the-robot.html
- 7 steps to learning R: http://www.datasciencecentral.com/profiles/blogs/learning-r-in-seven-simple-steps
- An archivist's guide to organising files on your computer: https://www.insidehighered.com/blogs/gradhacker/organize-your-computer-help-archivist
- Is Google DeepMind going to take on Star Craft next? http://www.businessinsider.com.au/google-deepmind-could-play-starcraft-2016-3?r=US&IR=T
- Google CEO Sundar Pichai thinks that the next big thing, after mobile, will be AI: http://www.computerworld.com/article/3060285/cloud-computing/googles-ceo-sees-ai-as-the-next-wave-in-computing.html
- An overview of Schmidhuber's 2014 review of deep learning neural networks: http://www.kdnuggets.com/2016/04/deep-learning-neural-networks-overview.html
- Generating dance with deep learning neural networks: http://www.extremetech.com/extreme/227287-deep-learning-neural-network-creates-its-own-interpretive-dance
- Deep learning that preserves privacy: http://techemergence.com/google-invests-in-privacy-preserving-deep-learning/
- More 'human like' image captioning with recurrent neural networks: https://www.technologyreview.com/s/601339/will-artificial-intelligence-win-the-caption-contest/
- Implementing a convolutional neural network for image recognition on a simulation of Babbage's analytical engine: http://motherboard.vice.com/en_au/read/charles-babbages-analytical-engine-takes-on-deep-learning
- ANN and the future of machine learning: http://insidebigdata.com/2016/04/25/neural-networks-and-the-future-of-machine-learning/
- Machine learning in conservation and environmental protection: http://ensia.com/features/three-ways-artificial-intelligence-is-helping-to-save-the-world/ I was doing this kind of thing eleven years ago!
- Applying deep learning in self-driving cars: http://spectrum.ieee.org/cars-that-think/transportation/self-driving/driveai-brings-deep-learning-to-selfdriving-cars/?utm_source=CarsThatThink&utm_medium=Newsletter&utm_campaign=CTT04272016
- AI could be humanity's last innovation, says UN Chief IT Officer: http://www.techrepublic.com/article/united-nations-cito/
- A neural network chip on a USB stick: http://www.theverge.com/2016/4/28/11510430/movidius-fathom-neural-compute-stick-myriad-2-chip also http://www.theregister.co.uk/2016/04/29/neural_network_on_a_stick/ How many sticks can you access at once?
- A convolutional neural network that simplifies sketches: http://hi.cs.waseda.ac.jp/~esimo/en/research/sketch/
- Colourising old photos with deep learning neural networks: http://techemergence.com/ai-is-colorizing-and-beautifying-the-world/
- Another basic explanation of deep learning neural networks: http://www.datasciencecentral.com/profiles/blogs/deep-learning-demystified
- Are engineers creating their own replacements? http://spectrum.ieee.org/at-work/tech-careers/are-engineers-designing-their-robotic-replacements
- Elon Musk's OpenAI initiative: http://www.wired.com/2016/04/openai-elon-musk-sam-altman-plan-to-set-artificial-intelligence-free/
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