Wednesday, February 8, 2017

Soft Computing, Volume 21, Number 3, February 2017

1) Special issue on Mexican International Conference on Artificial Intelligence, MICAI 2014 and 2015
Author(s): Hiram Ponce, Miguel González-Mendoza, Ma. Lourdes Martínez-Villaseñor
Pages: 555-556

2) Bagging-TPMiner: a classifier ensemble for masquerader detection based on typical objects
Author(s): Miguel Angel Medina-Pérez, Raúl Monroy, J. Benito Camiña & Milton García-Borroto
Pages: 557-569

3) ANFIS and MPC controllers for a reconfigurable lower limb exoskeleton
Author(s): Carlos A. Rodriguez, Pedro Ponce, Arturo Molina
Pages: 571-584

4) Cross-domain deception detection using support vector networks
Author(s): Ángel Hernández-Castañeda, Hiram Calvo, Alexander Gelbukh & Jorge J. García Flores
Pages: 585-595

5) Closed determination of the number of neurons in the hidden layer of a multi-layered perceptron network
Author(s): Angel Kuri-Morales
Pages: 597-609

6) Segmentation of carbon nanotube images through an artificial neural network
Author(s): María Celeste Ramírez Trujillo, Teresa E. Alarcón, Oscar S. Dalmau & Adalberto Zamudio Ojeda
Pages: 611-625

7) Application of the distributed document representation in the authorship attribution task for small corpora
Author(s): Juan-Pablo Posadas-Durán, Helena Gómez-Adorno, Grigori Sidorov, Ildar Batyrshin, David Pinto & Liliana Chanona-Hernández
Pages: 627-639

8) A 3-SPS-1S parallel robot-based laser sensing for applications in precision agriculture
Author(s): Ricardo Zavala-Yoe, Ricardo A. Ramírez-Mendoza, Silverio García-Lara
Pages: 641-650

9) A methodology based on Deep Learning for advert value calculation in CPM, CPC and CPA networks
Author(s): Luis Miralles-Pechuán, Dafne Rosso, Fernando Jiménez, Jose M. García
Pages: 651-665

10) Interval type-2 fuzzy logic for dynamic parameter adaptation in the bat algorithm
Author(s): Jonathan Perez, Fevrier Valdez, Oscar Castillo, Patricia Melin, Claudia Gonzalez & Gabriela Martinez
Pages: 667-685

11) A new class of BL-algebras
Author(s): Somayeh Motamed, Lida Torkzadeh
Pages: 687-698

12) Third-order reciprocally convex approach to stability of fuzzy cellular neural networks under impulsive perturbations
Author(s): Cheng-De Zheng, Yongjin Xian, Zhanshan Wang
Pages: 699-720

13) An experimental analysis of a new two-stage crossover operator for multiobjective optimization
Author(s): K. Liagkouras, K. Metaxiotis
Pages: 721-751

14) An intelligent character recognition method to filter spam images on cloud
Author(s): Jun Chen, Hong Zhao, Jufeng Yang, Jian Zhang, Tao Li, Kai Wang
Pages: 753-763

15) Social media as sensor in real world: movement trajectory detection with microblog
Author(s): Xueqin Sui, Zhumin Chen, Lei Guo, Kai Wu, Jun Ma, Guanghui Wang
Pages: 765-779

16) A multiagent evolutionary algorithm with direct and indirect combined representation for constraint satisfaction problems
Author(s): Xingxing Hao, Jing Liu
Pages: 781-793

17) Distributed steganalysis of compressed speech
Author(s): Hui Tian, Yanpeng Wu, Yiqiao Cai, Yongfeng Huang, Jin Liu, Tian Wang, Yonghong Chen & Jing Lu
Pages: 795-804

18) A two-agent single-machine scheduling problem to minimize the total cost with release dates
Author(s): Du-Juan Wang, Yunqiang Yin, Wen-Hsiang Wu, Wen-Hung Wu, Chin-Chia Wu & Peng-Hsiang Hsu
Pages: 805-816

19) Single-valued neutrosophic similarity measures based on cotangent function and their application in the fault diagnosis of steam turbine
Author(s): Jun Ye
Pages: 817-825

Friday, February 3, 2017

Review for 3 February 2017

Below are some of the interesting links I Tweeted about recently.

  1. Finding exploits in AIs: http://www.theregister.co.uk/2017/01/24/summoning_demons_to_find_bugs/
  2. Ways of integrating machine learning into chatbots: http://www.kdnuggets.com/2017/01/chatbots-steroids-10-key-machine-learning-capabilities.html
  3. Paper on finding exploits in AIs: https://www.semanticscholar.org/paper/Summoning-Demons-The-Pursuit-of-Exploitable-Bugs-Stevens-Suciu/419680923e9e80001ae543d460119f3f5f7ec8b7 
  4. Looks like Beall's lists were forced offline by legal threats: https://www.insidehighered.com/news/2017/01/18/librarians-list-predatory-journals-reportedly-removed-due-threats-and-politics 
  5. Counting crowds with deep learning: http://spectrum.ieee.org/tech-talk/robotics/artificial-intelligence/ai-could-transform-the-science-of-counting-crowds 
  6. 5 big data trends shaping AI this year: http://www.techrepublic.com/article/5-big-data-trends-that-will-shape-ai-in-2017/ 
  7. Is Google going to bring machine learning to the Raspberry Pi? http://www.zdnet.com/article/google-is-bringing-ai-to-your-raspberry-pi/ 
  8. A deep learning convolutional ANN can identify skin cancer as well as a dermatologist: http://spectrum.ieee.org/the-human-os/biomedical/diagnostics/computer-diagnoses-skin-cancers 
  9. Sounds like Bayesian search theory-using swarm AI for market research: http://www.techrepublic.com/article/how-to-use-swarm-a-i-instead-of-polls-for-market-research/ 
  10. The poker-playing AI is getting better: http://www.theverge.com/2017/1/25/14358246/ai-poker-tournament-cmu-libratus-vs-human-losing 
  11. Brief overview of AI in chatbots: http://www.kdnuggets.com/2017/01/artificial-intelligence-speech-recognition-chatbots-primer.html 
  12. Calls for an independent watchdog group to prevent discriminatory uses of AI: https://www.theguardian.com/technology/2017/jan/27/ai-artificial-intelligence-watchdog-needed-to-prevent-discriminatory-automated-decisions 
  13. I've been saying this for years-you can't put bad data into a good algorithm and expect a good model: http://www.kdnuggets.com/2017/01/bad-data-good-models-bad-results.html 
  14. Using ANN to manipulate images of peoples' faces: http://www.theverge.com/tldr/2017/1/27/14412814/faceapp-neural-networks-ai-smile-image-manipulation 
  15. A cheat-sheet for manipulating data in Python using Pandas: http://www.kdnuggets.com/2017/01/pandas-cheat-sheet.html 
  16. Where is DeepMind's AI ethics board? https://www.theguardian.com/technology/2017/jan/26/google-deepmind-ai-ethics-board 
  17. How scientists use social media: https://www.eurekalert.org/pub_releases/2016-10/uoo-nsr101216.php
  18. How will the courts deal with AI? https://techcrunch.com/2017/01/28/artificial-intelligence-and-the-law/ 
  19. 6 areas of AI & ML to watch: http://www.kdnuggets.com/2017/01/6-areas-ai-machine-learning.html 
  20. Sounds like we need more standards like FuzzyML: https://techcrunch.com/2017/01/28/ais-open-source-model-is-closed-inadequate-and-outdated/ 
  21. Using machine learning to decipher the ancient Indus script: http://www.theverge.com/2017/1/25/14371450/indus-valley-civilization-ancient-seals-symbols-language-algorithms-ai 
  22. Kinda embarressed that my country gave this guy citizenship: https://techcrunch.com/2017/01/26/peter-thiel-new-zealand-citizen/ 
  23. IBM's PowerAI ML framework now has support for TensorFlow: https://techcrunch.com/2017/01/26/ibm-adds-support-for-googles-tensorflow-to-its-powerai-deep-learning-framework/ 
  24. Putting an intelligent machine in its place: https://techcrunch.com/2017/01/14/putting-the-intelligent-machine-in-its-place/ 
  25. 5 big data trends shaping AI in 2017: http://www.techrepublic.com/article/5-big-data-trends-that-will-shape-ai-in-2017/ 
  26. An AI is now beating Poker champions: https://www.theguardian.com/technology/2017/jan/30/libratus-poker-artificial-intelligence-professional-human-players-competition 
  27. What we should do to avoid an AI-catastrophe, according to Elon Musk: http://www.cnbc.com/2017/01/31/elon-musk-thinks-we-will-have-to-use-ai-this-way-to-avoid-a-catastrophic-future.html 
  28. Why deep learning? https://www.datanami.com/2017/01/30/deep-learning-now/ 
  29. List of140 formulae related to machine learning: https://drive.google.com/file/d/0B0RLknmL54khQlhGUzFUWEtncTA/view 
  30. An AI that diagnoses cataracts as well as opthamologists do: http://spectrum.ieee.org/the-human-os/biomedical/diagnostics/ophthalmologists-vs-ai-its-a-tie 
  31. Facebook's approach to evaluating general AI: https://techcrunch.com/2017/02/01/how-facebook-plans-to-evaluate-its-quest-for-generalized-artificial-intelligence/ 
  32. Not so much a boycott for me, more too scared to set foot in the USA as a foreigner with that nutter in charge: https://www.insidehighered.com/news/2017/01/31/protest-trump-entry-ban-some-scholars-are-boycotting-us-based-conferences

Thursday, February 2, 2017

IEEE Transactions on Neural Networks and Learning Systems; Volume 28, Issue 2, February 2017

1. Hierarchical Change-Detection Tests
Author(s): Cesare Alippi; Giacomo Boracchi; Manuel Roveri
Page(s): 246 - 258

2. Stability Analysis of Neural Networks With Two Delay Components Based on Dynamic Delay Interval Method
Author(s): Huaguang Zhang; Qihe Shan; Zhanshan Wang
Page(s): 259 - 267

3. Asynchronous Dissipative State Estimation for Stochastic Complex Networks With Quantized Jumping Coupling and Uncertain Measurements
Author(s): Yong Xu; Renquan Lu; Hui Peng; Kan Xie; Anke Xue
Page(s): 268 - 277

4. A Locality-Constrained and Label Embedding Dictionary Learning Algorithm for Image Classification
Author(s): Zhengming Li; Zhihui Lai; Yong Xu; Jian Yang; David Zhang
Page(s): 278 - 293

5. Asymmetric Actuator Backlash Compensation in Quantized Adaptive Control of Uncertain Networked Nonlinear Systems
Author(s): Guanyu Lai; Zhi Liu; Yun Zhang; Chun Lung Philip Chen; Shengli Xie
Page(s): 294 - 307

6. A Graph-Embedding Approach to Hierarchical Visual Word Mergence
Author(s): Lei Wang; Lingqiao Liu; Luping Zhou
Page(s): 308 - 320

7. Identification and Control for Singularly Perturbed Systems Using Multitime-Scale Neural Networks
Author(s): Dongdong Zheng; Wen-Fang Xie; Xuemei Ren; Jing Na
Page(s): 321 - 333

8. Out-of-Sample Extensions for Non-Parametric Kernel Methods
Author(s): Binbin Pan; Wen-Sheng Chen; Bo Chen; Chen Xu; Jianhuang Lai
Page(s): 334 - 345

9. Extended Dissipative State Estimation for Markov Jump Neural Networks With Unreliable Links
Author(s): Hao Shen; Yanzheng Zhu; Lixian Zhang; Ju H. Park
Page(s): 346 - 358

10. A Novel Twin Support-Vector Machine With Pinball Loss
Author(s): Yitian Xu; Zhiji Yang; Xianli Pan
Page(s): 359 - 370

11. Closed-Loop Modulation of the Pathological Disorders of the Basal Ganglia Network
Author(s): Chen Liu; Jiang Wang; Huiyan Li; Meili Lu; Bin Deng; Haitao Yu; Xile Wei; Chris Fietkiewicz; Kenneth A. Loparo
Page(s): 371 - 382

12. QRNN: q-Generalized Random Neural Network
Author(s): Dusan Stosic; Darko Stosic; Cleber Zanchettin; Teresa Ludermir; Borko Stosic
Page(s): 383 - 390

13. Growing Echo-State Network With Multiple Subreservoirs
Author(s): Junfei Qiao; Fanjun Li; Honggui Han; Wenjing Li
Page(s): 391 - 404

14. A Scoring Scheme for Online Feature Selection: Simulating Model Performance Without Retraining
Author(s): Debarka Sengupta; Sanghamitra Bandyopadhyay; Debajyoti Sinha
Page(s): 405 - 414

15. Distributed Recurrent Neural Networks for Cooperative Control of Manipulators: A Game-Theoretic Perspective
Author(s): Shuai Li; Jinbo He; Yangming Li; Muhammad Usman Rafique
Page(s): 415 - 426

16. Graph Theory-Based Pinning Synchronization of Stochastic Complex Dynamical Networks
Author(s): Xiao-Jian Li; Guang-Hong Yang
Page(s): 427 - 437

17. Learning a Coupled Linearized Method in Online Setting
Author(s): Wei Xue; Wensheng Zhang
Page(s): 438 - 450

18. Cross-Modality Feature Learning Through Generic Hierarchical Hyperlingual-Words
Author(s): Ming Shao; Yun Fu
Page(s): 451 - 463

19. Identification of Boolean Networks Using Premined Network Topology Information
Author(s): Xiaohua Zhang; Huaxiang Han; Weidong Zhang
Page(s): 464 - 469

20. A Proposal for Local k Values for k-Nearest Neighbor Rule
Author(s): Nicolás García-Pedrajas; Juan A. Romero del Castillo; Gonzalo Cerruela-García
Page(s): 470 - 475

21. Impulsive Effects and Stability Analysis on Memristive Neural Networks With Variable Delays
Author(s): Shukai Duan; Huamin Wang; Lidan Wang; Tingwen Huang; Chuandong Li
Page(s): 476 - 481

22. Neural Network-Based DOBC for a Class of Nonlinear Systems With Unmatched Disturbances
Author(s): Haibin Sun; Lei Guo
Page(s): 482 - 489

Tuesday, January 31, 2017

Soft Computing, Volume 21, Issue 2, January 2017

1) Editorial: Special issue on soft computing for knowledge management and web applications
Author(s): Chang-Shing Lee & Hung-Yu Kao
Pages: 281–282

2) Particle swarm optimization algorithm with environmental factors for clustering analysis
Author(s): Wei Song, Wei Ma & Yingying Qiao
Pages: 283-293

3) Heuristic procedures for improving the predictability of a genetic programming financial forecasting algorithm
Author(s): Michael Kampouridis & Fernando E. B. Otero
Pages: 295-310

4) Exploring lexical, syntactic, and semantic features for Chinese textual entailment in NTCIR RITE evaluation tasks
Author(s): Wei-Jie Huang & Chao-Lin Liu
Pages: 311-330

5) An empirical study on evaluating basic characteristics and adaptability to users of a preventive care system with learning communication robots
Author(s): Daisuke Kitakoshi, Takuya Okano & Masato Suzuki
Pages: 331-351

6) Feature-driven linguistic-based entity matching in linked data with application in pharmacy
Author(s): Parisa D. Hossein Zadeh, Mahsa D. Hossein Zadeh & Marek Z. Reformat
Pages: 353-368

7) Ontologies in engineering: the OntoDB/OntoQL platform
Author(s): Yamine Ait-Ameur, Mickaël Baron, Ladjel Bellatreche, Stéphane Jean & Eric Sardet
Pages: 369-389

8) A semantic frame-based intelligent agent for topic detection
Author(s): Yung-Chun Chang, Yu-Lun Hsieh, Cen-Chieh Chen & Wen-Lian Hsu
Pages: 391-401

9) SLMBC: spiral life cycle model-based Bayesian classification technique for efficient software fault prediction and classification
Author(s): Rajaganapathy Chinna Gounder Dhanajayan & Subramani Appavu Pillai
Pages: 403-415

10) A trust model for recommender agent systems
Author(s): Elham Majd & Vimala Balakrishnan
Pages: 417-433

11) A novel path planning algorithm based on plant growth mechanism
Author(s): Yaoming Zhou, Yongchao Wang, Xuzhi Chen, Lei Zhang & Kan Wu
Pages: 435-445

12) Seam warping: a new approach for image retargeting for small displays
Author(s): Lixia Zhang, Kangshun Li, Zhaoming Ou & Fubin Wang
Pages: 447-457

13) New third-order Newton-like method with lower iteration number and lower TNFE
Author(s): Pantelimon George Popescu, Radu Poenaru & Florin Pop
Pages: 459-466

14) A three-stage global optimization method for server selection in content delivery networks
Author(s): Ting Wang, Junde Song & Meina Song
Pages: 467-475

15) Nature-inspired metaheuristic multivariate adaptive regression splines for predicting refrigeration system performance
Author(s): Min-Yuan Cheng, Jui-Sheng Chou & Minh-Tu Cao
Pages: 477-489

16) Modified EMG-based handgrip force prediction using extreme learning machine
Author(s): Hongxin Cao, Shouqian Sun & Kejun Zhang
Pages: 491-500

17) Finite life span for improving the selection scheme in evolution strategies
Author(s): Ali Ahrari & Oliver Kramer
Pages: 501-513

18) Loss evaluation analysis of illegal attack in SCSKP
Author(s): Peng Zhang, Lei Liu, Rui Zhang & Guangli Li
Pages: 515-524

19) Day-ahead electricity price forecasting using WPT, GMI and modified LSSVM-based S-OLABC algorithm
Author(s): H. Shayeghi, A. Ghasemi, M. Moradzadeh & M. Nooshyar
Pages: 525-541

20) Hypoglycemia detection: multiple regression-based combinational neural logic approach
Author(s): Sai Ho Ling, Phyo Phyo San, Hak Keung Lam & Hung T. Nguyen
Pages: 543-553

Tuesday, January 24, 2017

Review for 24 January 2016

Below are some of the interesting links I Tweeted about recently.

  1. Strategies to increase the participation of women in computer science: http://www.techrepublic.com/article/how-northeastern-plans-to-reach-equal-male-female-cs-enrollment-by-2021/
  2. How to apply machine learning to business problems: http://techemergence.com/apply-machine-learning-to-business-problems/ 
  3. And, where to apply machine learning first in business: http://techemergence.com/where-to-apply-machine-learning-first/
  4. A beginner's guide to chatbots: https://chatbotsmagazine.com/the-complete-beginner-s-guide-to-chatbots-8280b7b906ca#.yopzsjy0k 
  5. How to stay competitive in the business of machine learning: http://www.kdnuggets.com/2017/01/stay-competitive-machine-learning-business.html 
  6. Guide to statistical hypothesis testing: http://www.datasciencecentral.com/profiles/blogs/your-guide-to-master-hypothesis-testing-in-statistics 
  7. Generative Adversarial Networks: http://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html 
  8. List of tools for building chatbots: https://chatbotsmagazine.com/the-tools-every-bot-creator-must-know-c0e9dd685094#.l49kg88c8 
  9. Introduction to how to do big data with Python: http://dataconomy.com/2016/10/big-data-python/ 
  10. Deep learning on low-power chips: http://spectrum.ieee.org/automaton/robotics/artificial-intelligence/ai-startup-neurala-deep-learning-for-nasa-powers-earth-robots 
  11. Support vector machines in R: http://www.datasciencecentral.com/profiles/blogs/learn-support-vector-machine-svm-from-scratch-in-r 
  12. White collar workers are already losing their jobs to AI: https://qz.com/875491/japanese-white-collar-workers-are-already-being-replaced-by-artificial-intelligence/
  13. This is troubling - a valuable resource is off-line. I hope legal bullying was not behind this: http://www.sciencemag.org/news/2017/01/mystery-controversial-list-predatory-publishers-disappears
  14. Biased data sets produce biased models which produce biased predictions. That's a fundamental of machine learning: http://motherboard.vice.com/en_au/read/minority-retort-why-oakland-police-turned-down-predictive-policing
  15. 3 guiding principles for an ethical AI: http://www.techrepublic.com/article/3-guiding-principles-for-ethical-ai-from-ibm-ceo-ginni-rometty/ 
  16. We're not ready for the enormous displacement of jobs that will be caused by automation & AI: https://www.theguardian.com/technology/2017/jan/11/robots-jobs-employees-artificial-intelligence 
  17. Companies need an AI strategy if employees are to get behind roll-out of AI: https://www.datanami.com/2017/01/17/ai-inevitable-retraining-needed-survey-finds/ 
  18. Using AI to estimate repair costs in car insurance claims: https://techcrunch.com/2017/01/19/in-the-future-ai-could-also-mean-auto-insurance/ 
  19. Applying ANN based style transfer to a movie: https://techcrunch.com/2017/01/19/kristen-stewart-co-authored-a-paper-on-style-transfer-and-the-ai-community-lost-its-mind/ 
  20. How to build your research output in one hour per day: http://science.sciencemag.org/content/353/6300/718 
  21. Deep learning applied to natural language processing: http://www.kdnuggets.com/2017/01/deep-learning-applied-natural-language-processing.html 
  22. AI created by AI: https://www.technologyreview.com/s/603381/ai-software-learns-to-make-ai-software/ … We're doomed.
  23. AI is having a huge impact on retail: http://www.informationweek.com/strategic-cio/digital-business/ai-technology-takes-center-stage-at-retail-convention/d/d-id/1327897 
  24. Deep learning is getting faster and cheaper: http://spectrum.ieee.org/computing/hardware/expect-deeper-and-cheaper-machine-learning 
  25. Battle of the chatbots: http://www.theregister.co.uk/2017/01/18/chatbot_battle/
  26. Automated machine learning: http://www.kdnuggets.com/2017/01/current-state-automated-machine-learning.html
  27. Predicting mortality of cardiac patients: http://www.ibtimes.co.uk/ai-can-predict-when-patients-will-die-heart-failure-80-accuracy-1601517
  28. Inter-disciplinary research can take a long time to publish: https://www.insidehighered.com/news/2016/12/02/scholar-complains-how-long-it-can-take-publish-interdisciplinary-science I know this from my own research.
  29. Research is needed at universities, but the undergrads are paying to be taught: http://www.theatlantic.com/education/archive/2016/11/have-public-universities-lost-their-focus/508424/
  30. How scientists use social media: https://www.eurekalert.org/pub_releases/2016-10/uoo-nsr101216.php
  31. AI will put managers out of work before skilled workers: https://www.theguardian.com/business/economics-blog/2017/jan/22/the-new-robot-revolution-will-take-the-bosss-job-not-the-gardeners 
  32. Machine learning might soon displace radiologists and pathologists: http://www.techrepublic.com/article/why-ai-is-about-to-make-some-of-the-highest-paid-doctors-obsolete/ 
  33. Introducing ethics into AI: https://techcrunch.com/2017/01/22/ethics-the-next-frontier-for-artificial-intelligence/

Tuesday, January 17, 2017

Neural Networks, Volume 86, Pages 1-122, February 2017

1) A new switching control for finite-time synchronization of memristor-based recurrent neural networks   
Author(s): Jie Gao, Peiyong Zhu, Ahmed Alsaedi, Fuad E. Alsaadi, Tasawar Hayat
Pages: 1-9

2) Improved exponential convergence result for generalized neural networks including interval time-varying delayed signals   
Author(s): G. Rajchakit, R. Saravanakumar, Choon Ki Ahn, Hamid Reza Karimi
Pages: 10-17

3) Global cluster synchronization in nonlinearly coupled community networks with heterogeneous coupling delays   
Author(s): Jui-Pin Tseng
Pages: 18-31

4) Decentralized event-triggered synchronization of uncertain Markovian jumping neutral-type neural networks with mixed delays   
Author(s): Sibel Senan, M. Syed Ali, R. Vadivel, Sabri Arik
Pages: 32-41

5) Dissipativity and stability analysis of fractional-order complex-valued neural networks with time delay   
Author(s): G. Velmurugan, R. Rakkiyappan, V. Vembarasan, Jinde Cao, Ahmed Alsaedi
Pages: 42-53

6) Robust learning in SpikeProp   
Author(s): Sumit Bam Shrestha, Qing Song
Pages: 54-68

7) A new hyperbox selection rule and a pruning strategy for the enhanced fuzzy min–max neural network   
Author(s): Mohammed Falah Mohammed, Chee Peng Lim
Pages: 69-79

8) A balanced motor primitive framework can simultaneously explain motor learning in unimanual and bimanual movements   
Author(s): Ken Takiyama, Yutaka Sakai
Pages: 80-89

9) Adaptive exponential synchronization of complex-valued Cohen–Grossberg neural networks with known and unknown parameters   
Author(s): Jin Hu, Chunna Zeng
Pages: 90-101

10) Neurons the decision makers, Part I: The firing function of a single neuron   
Author(s): Thomas Saaty
Pages: 102-114

11) Part 2—The firings of many neurons and their density; the neural network its connections and field of firings   
Author(s): Thomas Saaty
Pages:
115-122

Wednesday, January 4, 2017

IEEE Transactions on Neural Networks and Learning Systems, Volume 28, Issue 1, January 2017

1. Editorial: A Successful Year and Looking Forward to 2017 and Beyond
Author(s): Haibo He
Page(s): 2 - 7

2. Nonparametric Density Estimation Based on Self-Organizing Incremental Neural Network for Large Noisy Data
Authors: Yoshihiro Nakamura; Osamu Hasegawa
Page(s): 8 - 17

3. Optimal Output Regulation for Heterogeneous Multiagent Systems via Adaptive Dynamic Programming
Authors: Huaguang Zhang; Hongjing Liang; Zhanshan Wang; Tao Feng
Page(s): 18 - 29

4. SpikeTemp: An Enhanced Rank-Order-Based Learning Approach for Spiking Neural Networks With Adaptive Structure
Authors: Jinling Wang; Ammar Belatreche; Liam P. Maguire; Thomas Martin McGinnity
Page(s): 30 - 43

5. Accurate Maximum-Margin Training for Parsing With Context-Free Grammars
Authors: Alexander Bauer; Mikio Braun; Klaus-Robert Müller
Page(s): 44 - 56

6. Unsupervised Metric Fusion Over Multiview Data by Graph Random Walk-Based Cross-View Diffusion
Authors: Yang Wang; Wenjie Zhang; Lin Wu; Xuemin Lin; Xiang Zhao
Page(s): 57 - 70

7. Pull-Based Distributed Event-Triggered Consensus for Multiagent Systems With Directed Topologies
Authors: Xinlei Yi; Wenlian Lu; Tianping Chen
Page(s): 71 - 79

8. A Cooperative Learning-Based Clustering Approach to Lip Segmentation Without Knowing Segment Number
Authors: Yiu-ming Cheung; Meng Li; Qinmu Peng; C. L. Philip Chen
Page(s): 80 - 93

9. Density-Dependent Quantized Least Squares Support Vector Machine for Large Data Sets
Authors: Shengyu Nan; Lei Sun; Badong Chen; Zhiping Lin; Kar-Ann Toh
Page(s): 94 - 106

10. A ParaBoost Method to Image Quality Assessment
Authors: Tsung-Jung Liu; Kuan-Hsien Liu; Joe Yuchieh Lin; Weisi Lin; C.-C. Jay Kuo
Page(s): 107 - 121

11. Monitoring Nonlinear and Non-Gaussian Processes Using Gaussian Mixture Model-Based Weighted Kernel Independent Component Analysis
Authors: Lianfang Cai; Xuemin Tian; Sheng Chen
Page(s): 122 - 135

12. Multimodal Degradation Prognostics Based on Switching Kalman Filter Ensemble
Authors: Pin Lim; Chi Keong Goh; Kay Chen Tan; Partha Dutta
Page(s): 136 - 148

13. Learning the Conformal Transformation Kernel for Image Recognition
Authors: Huilin Xiong; Wenxian Yu; Xin Yang; M. N. S. Swamy; Qiuze Yu
Page(s): 149 - 163

14. Discriminative Feature Extraction by a Neural Implementation of Canonical Correlation Analysis
Authors: Cemal Okan Sakar; Olcay Kursun
Page(s): 164 - 176

15. 3-D Laser-Based Multiclass and Multiview Object Detection in Cluttered Indoor Scenes
Authors: Xuesong Zhang; Yan Zhuang; Huosheng Hu; Wei Wang
Page(s): 177 - 190

16. Propagation of Collective Temporal Regularity in Noisy Hierarchical Networks
Authors: Ruixue Han; Jiang Wang; Rui Miao; Bin Deng; Yingmei Qin; Haitao Yu; Xile Wei
Page(s): 191 - 205

17. Global Mittag–Leffler Stabilization of Fractional-Order Memristive Neural Networks
Authors: Ailong Wu; Zhigang Zeng
Page(s): 206 - 217

18. Artificial Epigenetic Networks: Automatic Decomposition of Dynamical Control Tasks Using Topological Self-Modification
Authors: Alexander P. Turner; Leo S. D. Caves; Susan Stepney; Andy M. Tyrrell; Michael A. Lones
Page(s): 218 - 230

19. Multiscale Support Vector Learning With Projection Operator Wavelet Kernel for Nonlinear Dynamical System Identification
Authors: Zhao Lu; Jing Sun; Kenneth Butts
Page(s): 231 - 243

Friday, December 30, 2016

IEEE Transactions on Cognitive and Developmental Systems, Volume 8, Number 4, December 2016

1. Affordance Research in Developmental Robotics: A Survey
Author(s): H. Min, C. Yi, R. Luo, J. Zhu and S. Bi
Pages: 237-255

2. Selective Attention by Perceptual Filtering in a Robot Control Architecture
Author(s): F. Ferland and F. Michaud
Pages: 256-270

3. Training Agents With Interactive Reinforcement Learning and Contextual Affordances
Author(s): F. Cruz, S. Magg, C. Weber and S. Wermter
Pages: 271-284

4. Spatial Concept Acquisition for a Mobile Robot That Integrates Self-Localization and Unsupervised Word Discovery From Spoken Sentences
Author(s): A. Taniguchi, T. Taniguchi and T. Inamura
Pages: 285-297

5. Decoding EEG in Cognitive Tasks With Time-Frequency and Connectivity Masks
Author(s): J. Li, Y. Wang, L. Zhang, A. Cichocki and T. P. Jung
Pages: 298-308

Complex & Intelligent Systems, Volume 4, Issue 2, December 2016

1. Multiple attribute grey relational analysis using DEA and AHP
Author(s): Mohammad Sadegh Pakkar
Pages: 243-250

2. Multi-objective optimization and visualization for analog design automation
Author(s): Abhaya Chandra Kammara, Lingaselvan Palanichamy, Andreas Konig
Pages: 251-267

3. Opinion formation in social networks: a time-variant and non-linear model
Author(s): Dionisios N. Sotiropoulos, Christos Bilanakos, George M. Giaglis
Pages: 269-284

4. An efficient identity-based QER cryptographic scheme
Author(s): Chandrashekhar Meshram, P. L. Powar
Pages: 285-291

5. Particle filtering with applications in networked systems: a survey
Author(s): Wenshuo Li, Zidong Wang, Yuan Yuan, Lei Guo
Pages: 293-315

Wednesday, December 14, 2016

Weekly Review 14 December 2016

Below are some of the interesting links I Tweeted about in the last week.

  1. How AI, and the economy, are evolving together: https://techcrunch.com/2016/12/04/artificial-intelligence-and-the-evolution-of-the-fractal-economy/
  2. OpenAI's Universe, a universal training ground for AI: http://www.theregister.co.uk/2016/12/05/openai_universe_reinforcement_learning/ 
  3. A basic over-view of what AI is: https://techcrunch.com/2016/12/04/wtf-is-ai/ 
  4. Doesn't seem to be an awful lot of AI in this AI marketing assistant: https://techcrunch.com/2016/12/05/meet-aiden-your-new-ai-coworker/ 
  5. Free ebooks on machine learning and data analysis: http://www.kdnuggets.com/2016/12/packt-free-ebooks-machine-learning-python-data-analysis.html 
  6. General AI is still a long way off: https://techcrunch.com/2016/12/05/deepmind-ceo-mustafa-suleyman-says-general-ai-is-still-a-long-way-off/ 
  7. Uber is expanding its AI research: http://www.techrepublic.com/article/with-launch-of-uber-ai-labs-ride-sharing-giant-aims-to-expand-ai-research-beyond-autonomous-cars/ 
  8. Amazon Go grocery shop uses AI instead of cashiers: http://www.techrepublic.com/article/amazon-go-grocery-store-replaces-cashiers-with-automation-and-ai/ 
  9. Using AI to search for a better treatment for ALS: https://techcrunch.com/2016/12/06/benevolentbios-artificial-intelligence-could-discover-a-better-treatment-for-als/ 
  10. Identity thieves are now using machine learning: https://www.datanami.com/2016/12/05/ai-will-spoof-steal-identify/ 
  11. 8 essential software tools for data scientists: http://www.datasciencecentral.com/profiles/blogs/8-essential-tools-for-data-scientists 
  12. Common statistical mistakes computer scientists make: http://www.cs.cornell.edu/~asampson/blog/statsmistakes.html 
  13. Many AI models are still black boxes: http://www.zdnet.com/article/inside-the-black-box-understanding-ai-decision-making/ 
  14. An AI that plays the FreeCiv strategy game at human-level: https://techcrunch.com/2016/12/06/aragos-ai-can-now-beat-some-human-players-at-complex-civ-strategy-games/ 
  15. An introductory tutorial on the Internet of Things: http://www.kdnuggets.com/2016/12/internet-of-things-tutorial-chapter-1-introduction.html 
  16. Many companies are still lacking the skills to implement machine learning projects: http://www.techrepublic.com/article/infographic-many-companies-lack-skills-to-implement-and-support-ai-and-machine-learning/ 
  17. Resisting catastrophic forgetting in neural networks: http://www.theregister.co.uk/2016/12/06/catastrophic_forgetting/ 
  18. Paper on resisting catastrophic forgetting: https://arxiv.org/abs/1612.00796
  19. Microsoft is partnering with Cray to run deep neural networks on supercomputers: http://www.techrepublic.com/article/microsoft-partners-with-cray-to-run-deep-learning-algorithms-on-supercomputers/ 
  20. Another basic overview of machine learning: http://www.kdnuggets.com/2016/12/too-afraid-ask-about-artificial-intelligence-machine-learning.html 
  21. A neural network based "ahem" detector, used to clean-up podcasts: http://www.datasciencecentral.com/profiles/blogs/ahem-detector-with-deep-learning 
  22. Google's DeepMind open sources more of its software: http://www.techrepublic.com/article/googles-deepmind-lab-opens-up-source-code-joins-race-to-develop-artificial-general-intelligence/ 
  23. Another way deep learning is improving speech recognition: http://www.theregister.co.uk/2016/12/09/improving_computers_learning_speech/ 
  24. 5 sources of bias in AI: https://techcrunch.com/2016/12/10/5-unexpected-sources-of-bias-in-artificial-intelligence/ 
  25. Why we shouldn't let computers (and by extension AI) do our thinking for us: https://www.theguardian.com/technology/2016/dec/10/google-facebook-critical-thinking-computers
  26. Using machine learning to search for trademarked logos: https://techcrunch.com/2016/12/12/trademarkvision-uses-machine-learning-to-make-finding-logos-as-easy-as-a-reverse-image-search/ 
  27. An AI that helps marketers write: https://techcrunch.com/2016/12/12/atomic-ai-helps-marketers-write-better/ 
  28. How to apply machine learning to business problems: http://techemergence.com/apply-machine-learning-to-business-problems/ 
  29. Governmental challenges with AI: https://www.technologyreview.com/s/603036/the-government-isnt-doing-enough-to-solve-big-problems-with-ai/?utm_campaign=internal&utm_medium=homepage&utm_source=grid_1

Complex & Intelligent Systems, Volume 2, Number 4

1. Multiple attribute grey relational analysis using DEA and AHP
Author(s): Mohammad Sadegh Pakkar
Pages: 243-250

2. Multi-objective optimization and visualization for analog design automation
Author(s): Abhaya Chandra Kammara, Lingaselvan Palanichamy & Andreas König
Pages: 251-267

3. Opinion formation in social networks: a time-variant and non-linear model
Author(s): Dionisios N. Sotiropoulos, Christos Bilanakos & George M. Giaglis
Pages: 269-284

4. An efficient identity-based QER cryptographic scheme
Author(s): Chandrashekhar Meshram & P. L. Powar
Pages: 285-291

5. Particle filtering with applications in networked systems: a survey
Author(s): Wenshuo Li, Zidong Wang, Yuan Yuan & Lei Guo
Pages: 293-315

Neural Networks, Volume 85, Pages 1-196, January 2017

1. Pinning-controlled synchronization of delayed neural networks with distributed-delay coupling via impulsive control   
Author(s): Wangli He, Feng Qian, Jinde Cao
Pages: 1-9

2. Recovering low-rank and sparse matrix based on the truncated nuclear norm   
Author(s): Feilong Cao, Jiaying Chen, Hailiang Ye, Jianwei Zhao, Zhenghua Zhou
Pages: 10-20

3. Complete stability of delayed recurrent neural networks with Gaussian activation functions   
Author(s): Peng Liu, Zhigang Zeng, Jun Wang
Pages: 21-32

4. An online incremental orthogonal component analysis method for dimensionality reduction   
Author(s): Tao Zhu, Ye Xu, Furao Shen, Jinxi Zhao
Pages: 33-50

5. Evaluation of extreme learning machine for classification of individual and combined finger movements using electromyography on amputees and non-amputees   
Author(s): Khairul Anam, Adel Al-Jumaily
Pages: 51-68

6. Attribute-based Decision Graphs: A framework for multiclass data classification   
Author(s): João Roberto Bertini, Maria do Carmo Nicoletti, Liang Zhao
Pages: 69-84

7. A modular architecture for transparent computation in recurrent neural networks   
Author(s): Giovanni S. Carmantini, Peter beim Graben, Mathieu Desroches, Serafim Rodrigues
Pages: 85-105

8. Echo State Networks for data-driven downhole pressure estimation in gas-lift oil wells   
Author(s): Eric A. Antonelo, Eduardo Camponogara, Bjarne Foss
Pages: 106-117

9. Mittag-Leffler stability of fractional-order neural networks in the presence of generalized piecewise constant arguments   
Author(s): Ailong Wu, Ling Liu, Tingwen Huang, Zhigang Zeng
Pages: 118-127

10. Finite-time synchronization of uncertain coupled switched neural networks under asynchronous switching   
Author(s): Yuanyuan Wu, Jinde Cao, Qingbo Li, Ahmed Alsaedi, Fuad E. Alsaadi
Pages: 128-139

11. Stabilization of metastable dynamical rotating waves in a ring of unidirectionally coupled sigmoidal neurons due to shortcuts   
Author(s): Yo Horikawa
Pages: 140-156

12. Synchronization of discrete-time neural networks with delays and Markov jump topologies based on tracker information   
Author(s): Xinsong Yang, Zhiguo Feng, Jianwen Feng, Jinde Cao
Pages: 157-164

13. A limit-cycle self-organizing map architecture for stable arm control   
Author(s): Di-Wei Huang, Rodolphe J. Gentili, Garrett E. Katz, James A. Reggia
Pages: 165-181

14. Developmental metaplasticity in neural circuit codes of firing and structure   
Author(s): Yoram Baram
Pages: 182-196


Monday, December 5, 2016

IEEE Transactions on Neural Networks and Learning Systems, Volume 27, Issue 12, December 2016.

1. Training Radial Basis Function Neural Networks for Classification via Class-Specific Clustering
Author(s): Jenni Raitoharju; Serkan Kiranyaz; Moncef Gabbouj
Pages: 2458 - 2471

2. Similarity Constraints-Based Structured Output Regression Machine: An Approach to Image Super-Resolution
Author(s): Cheng Deng; Jie Xu; Kaibing Zhang; Dacheng Tao; Xinbo Gao; Xuelong Li
Pages: 2472 - 2485

3. Deep Learning of Part-Based Representation of Data Using Sparse Autoencoders With Nonnegativity Constraints
Author(s): Ehsan Hosseini-Asl; Jacek M. Zurada; Olfa Nasraoui
Pages: 2486 - 2498

4. A Unified Framework for Representation-Based Subspace Clustering of Out-of-Sample and Large-Scale Data
Author(s): Xi Peng; Huajin Tang; Lei Zhang; Zhang Yi; Shijie Xiao
Pages: 2499 - 2512

5. A Theoretical Foundation of Goal Representation Heuristic Dynamic Programming
Author(s): Xiangnan Zhong; Zhen Ni; Haibo He
Pages: 2513 - 2525

6. Sequential Compact Code Learning for Unsupervised Image Hashing
Author(s): Li Liu; Ling Shao
Pages: 2526 - 2536

7. Organizing Books and Authors by Multilayer SOM
Author(s): Haijun Zhang; Tommy W. S. Chow; Q. M. Jonathan Wu
Pages: 2537 - 2550

8. Generalized Higher Order Orthogonal Iteration for Tensor Learning and Decomposition
Author(s): Yuanyuan Liu; Fanhua Shang; Wei Fan; James Cheng; Hong Cheng
Pages: 2551 - 2563

9. Dynamic Learning From Neural Control for Strict-Feedback Systems With Guaranteed Predefined Performance
Author(s): Min Wang; Cong Wang; Peng Shi; Xiaoping Liu
Pages: 2564 - 2576

10. Online Solution of Two-Player Zero-Sum Games for Continuous-Time Nonlinear Systems With Completely Unknown Dynamics
Author(s): Yue Fu; Tianyou Chai
Pages: 2577 - 2587

11. Shortcomings/Limitations of Blockwise Granger Causality and Advances of Blockwise New Causality
Author(s): Sanqing Hu; Xinxin Jia; Jianhai Zhang; Wanzeng Kong; Yu Cao
Pages: 2588 - 2601

12. Semisupervised Multiclass Classification Problems With Scarcity of Labeled Data: A Theoretical Study
Author(s): Jonathan Ortigosa-Hernández;  I?aki Inza;  Jose A. Lozano
Pages: 2602 - 2614

13. Integration-Enhanced Zhang Neural Network for Real-Time-Varying Matrix Inversion in the Presence of Various Kinds of Noises
Author(s): Long Jin; Yunong Zhang; Shuai Li
Pages: 2615 - 2627

14. Scalable Linear Visual Feature Learning via Online Parallel Nonnegative Matrix Factorization
Author(s): Xueyi Zhao; Xi Li; Zhongfei Zhang; Chunhua Shen; Yueting Zhuang; Lixin Gao; Xuelong Li
Pages: 2628 - 2642

15. Information Theoretic Subspace Clustering
Author(s): Ran He; Liang Wang; Zhenan Sun; Yingya Zhang; Bo Li
Pages: 2643 - 2655

16. Adaptive Scaling of Cluster Boundaries for Large-Scale Social Media Data Clustering
Author(s): Lei Meng; Ah-Hwee Tan; Donald C. Wunsch
Pages: 2656 - 2669

17. K-MEAP: Multiple Exemplars Affinity Propagation With Specified K Clusters
Author(s): Yangtao Wang; Lihui Chen
Pages: 2670 - 2682

18. Landslide Displacement Prediction With Uncertainty Based on Neural Networks With Random Hidden Weights
Author(s): Cheng Lian; Zhigang Zeng; Wei Yao; Huiming Tang; Chun Lung Philip Chen
Pages: 2683 - 2695

19. Impulsive Synchronization of Reaction–Diffusion Neural Networks With Mixed Delays and Its Application to Image Encryption
Author(s): Wu-Hua Chen; Shixian Luo; Wei Xing Zheng
Pages: 2696 - 2710

20. MSDLSR: Margin Scalable Discriminative Least Squares Regression for Multicategory Classification
Author(s): Lingfeng Wang; Xu-Yao Zhang; Chunhong Pan
Pages: 2711 - 2717

21. Data-Driven Modeling for UGI Gasification Processes via an Enhanced Genetic BP Neural Network With Link Switches
Author(s): Shida Liu; Zhongsheng Hou; Chenkun Yin
Pages: 2718 - 2729

22. Is a Complex-Valued Stepsize Advantageous in Complex-Valued Gradient Learning Algorithms?
Author(s): Huisheng Zhang; Danilo P. Mandic
Pages: 2730 - 2735

23. Enhanced Logical Stochastic Resonance in Synthetic Genetic Networks
Author(s): Nan Wang; Aiguo Song
Pages: 2736 - 2739

24. A Boosting Approach to Exploit Instance Correlations for Multi-Instance Classification
Author(s): Yali Li; Shengjin Wang; Qi Tian; Xiaoqing Ding
Pages: 2740 - 2747

25. Using Digital Masks to Enhance the Bandwidth Tolerance and Improve the Performance of On-Chip Reservoir Computing Systems
Author(s): Bendix Schneider; Joni Dambre; Peter Bienstman
Pages: 2748 - 2753

26. Synchronization Analysis and Design of Coupled Boolean Networks Based on Periodic Switching Sequences
Author(s): Huaguang Zhang; Hui Tian; Zhanshan Wang; Yanfang Hou
Pages: 2754 - 2759

27. Power Quality Analysis Using a Hybrid Model of the Fuzzy Min–Max Neural Network and Clustering Tree
Author(s): Manjeevan Seera; Chee Peng Lim; Chu Kiong Loo; Harapajan Singh
Pages: 2760 - 2767

28. Max-Margin-Based Discriminative Feature Learning
Author(s): Changsheng Li; Qingshan Liu; Weishan Dong; Fan Wei; Xin Zhang; Lin Yang
Pages: 2768 - 2775


Weekly Review 5 December 2016

Below are some of the interesting links I Tweeted about in the last week.

  1. Why the results of Google's neural network based image enhancement system RAISR should be mistrusted: https://thestack.com/world/2016/11/15/raisr-is-googles-ai-driven-image-resizing-algorithm-dishonest/
  2. Another way companies can abuse big data and modelling: http://www.nzherald.co.nz/business/news/article.cfm?c_id=3&objectid=11757150
  3. List of machine learning data sets: https://www.analyticsvidhya.com/blog/2016/11/25-websites-to-find-datasets-for-data-science-projects/
  4. Why the results of Google's neural network based image enhancement system RAISR should be mistrusted: https://thestack.com/world/2016/11/15/raisr-is-googles-ai-driven-image-resizing-algorithm-dishonest/
  5. Another way companies can abuse big data and modelling: http://www.nzherald.co.nz/business/news/article.cfm?c_id=3&objectid=11757150
  6. List of machine learning data sets: https://www.analyticsvidhya.com/blog/2016/11/25-websites-to-find-datasets-for-data-science-projects/
  7. A basic introduction to some of the more popular machine learning algorithms: http://www.kdnuggets.com/2016/11/intro-machine-learning-developers.html 
  8. Are the well-publicised failures of machine learning really such bad failures? http://www.datasciencecentral.com/profiles/blogs/why-so-many-machine-learning-implementations-fail 
  9. Stealing (really reverse engineering) machine learning models via public API: http://www.kdnuggets.com/2016/11/arxiv-spotlight-stealing-machine-learning-models-prediction-apis.html 
  10. Dreaming in deep neural networks makes learning 10x faster: https://www.extremetech.com/extreme/240163-googles-deepmind-ai-gives-robots-ability-dream 
  11. Paper on dreaming in deep neural networks: https://arxiv.org/pdf/1611.05397.pdf 
  12. Using machine learning to predict dangerous seismic events in coal mines: https://deepsense.io/machine-learning-models-predicting-dangerous-seismic-events/ 
  13. Bad article title-it's not AI that's gone too far, rather the people building and applying the AI: http://www.datasciencecentral.com/profiles/blogs/has-ai-gone-too-far-automated-inference-of-criminality-using-face 
  14. The next 3 industries that will be disrupted by AI: http://dataconomy.com/artificial-intelligence-retail-healthcare-finance/ 
  15. Teaching neural networks fear: http://www.theregister.co.uk/2016/11/30/artificial_intelligence_intrinsic_fear/ 
  16. So much for a classless society: https://www.technologyreview.com/s/602987/china-turns-big-data-into-big-brother/
  17. Deep neural networks generate song lyrics from pictures of a scene: https://www.theguardian.com/technology/2016/nov/29/its-no-christmas-no-1-but-ai-generated-song-brings-festive-cheer-to-researchers 
  18. MusicNet is an annotated set of classicial music performances for training machine learning models: https://techcrunch.com/2016/11/30/musicnet-aims-to-give-machine-learning-algorithms-a-taste-for-beethoven/ 
  19. There seems to be something of a shortage of trained AI practitioners: http://www.techproresearch.com/downloads/research-companies-lack-skills-to-implement-and-support-ai-and-machine-learning/?ftag=tip185eb84 
  20. Amazon launches its AI web platform: https://techcrunch.com/2016/11/30/amazon-launches-amazon-ai-to-bring-its-machine-learning-smarts-to-developers/ 
  21. The US government is continuing to take AI seriously. Is the NZ government going to do the same? http://www.techrepublic.com/article/us-senate-subcommittee-meets-on-the-dawn-of-ai-today-livestream-available/ 
  22. The optimisation problems with deep neural networks: http://www.kdnuggets.com/2016/12/hard-thing-about-deep-learning.html 
  23. Does Google have the edge in cloud-based AI? http://www.techrepublic.com/article/the-cloud-war-moves-to-machine-learning-does-google-have-an-edge/ 
  24. Learn maths if you want to get into AI, according to Facebook's head of AI research: https://techcrunch.com/2016/12/01/facebooks-advice-to-students-interested-in-artificial-intelligence/ 
  25. Bringing AI to logo design-sounds like an interactive evolutionary algorithm: https://techcrunch.com/2016/12/01/logojoy-makes-designers-unemployed/ 
  26. Detecting diabetic retinopathy (damage to the retina caused by diabetes) with machine learning: http://betanews.com/2016/11/29/google-machine-learning-diabetes-retinopathy-eyes-vision/
  27. Facebook is developing AI to flag "offensive" videos: http://www.reuters.com/article/us-facebook-ai-video-idUSKBN13Q52M
  28. The 10 biggest failures in applications of artificial intelligence for 2016: http://www.techrepublic.com/article/top-10-ai-failures-of-2016/ 
  29. Microsoft in embedding image recognition AI into some of its Office applications: http://www.theverge.com/2016/12/2/13825590/microsoft-office-apps-ai-word-powerpoint-accessibility 
  30. Random forests in Python: http://www.kdnuggets.com/2016/12/random-forests-python.html 
  31. How can governments regulate ecommerce (and the AI that drives it): https://www.theguardian.com/commentisfree/2016/dec/04/how-do-you-throw-book-at-an-algorithm-internet-big-data

Monday, November 28, 2016

Weekly Review 28 November 2016

Below are some of the interesting links I Tweeted about in the last week.

  1. Not to be too glib, but this is what being a post-doc is like: http://www.nzherald.co.nz/business/news/article.cfm?c_id=3&objectid=11752215
  2. Pictorial description of backpropagation ANN training: http://www.datasciencecentral.com/profiles/blogs/neural-networks-the-backpropagation-algorithm-in-a-picture 
  3. Implementing Human ActivityRecognition in TensorFlow: http://www.kdnuggets.com/2016/11/implementing-cnn-human-activity-recognition-tensorflow.html
  4. Combining text analytics and machine learning: https://www.datanami.com/2016/11/21/text-analytics-machine-learning-virtuous-combination/ 
  5. Top 20 open source Python machine learning projects: http://www.kdnuggets.com/2016/11/top-20-python-machine-learning-open-source-updated.html 
  6. Questions to ask when moving machine learning systems into production: http://www.kdnuggets.com/2016/11/moving-machine-learning-practice-production.html 
  7. Choosing a programming language for machine learning applications: http://www.datasciencecentral.com/profiles/blogs/python-machine-learning-and-language-wars-a-highly-subjective-poi 
  8. Baidu is releasing Chinese-language speech recognition APIs: https://www.datanami.com/2016/11/23/baidu-ups-ai-ante-deep-learning-release/ 
  9. Google's deep-learning based translation system seems to have learned its own internal language model: https://techcrunch.com/2016/11/22/googles-ai-translation-tool-seems-to-have-invented-its-own-secret-internal-language/ 
  10. Tech leaders need to be aware of biased models: http://www.techrepublic.com/article/algorithms-can-be-racist-why-cxos-should-understand-the-assumptions-behind-predictive-analytics/ 
  11. A deep-learning based system learned to lipread by watching television, performs better than a human: http://www.theverge.com/2016/11/24/13740798/google-deepmind-ai-lip-reading-tv 
  12. AI is making inroads into the music industry: http://www.theregister.co.uk/2016/11/24/big_music_goes_mad_for_chat_bots_and_ai/ 
  13. An introduction (with Python code) to linear regression: http://www.kdnuggets.com/2016/11/linear-regression-least-squares-matrix-multiplication-concise-technical-overview.html 
  14. How Google uses cloud-based machine learning to help companies fill job vacancies: http://www.techrepublic.com/article/how-googles-new-cloud-jobs-api-uses-machine-learning-to-help-companies-fill-jobs/ 
  15. Why neural networks won't take over from human translators: http://motherboard.vice.com/en_au/read/shitloads-and-zingers-the-perils-of-machine-translation

Wednesday, November 23, 2016

IEEE Transactions on Fuzzy Systems, vol. 24, issue 5, 2016

1. On Pythagorean and Complex Fuzzy Set Operations
Author(s): Scott Dick; Ronald R. Yager; Omolbanin Yazdanbakhsh
Pages: 1009- 1021

2. Classification of Type-2 Fuzzy Sets Represented as Sequences of Vertical Slices
Author(s): Lorenzo Livi; Hooman Tahayori; Antonello Rizzi; Alireza Sadeghian; Witold Pedrycz
Pages: 1022- 1034

3. Power Average of Trapezoidal Intuitionistic Fuzzy Numbers Using Strict t-Norms and t-Conorms
Author(s): Shu-Ping Wan; Zhi-Hong Yi
Pages: 1035- 1047

4. Aperiodic Sampled-Data Sliding-Mode Control of Fuzzy Systems With Communication Delays Via the Event-Triggered Method
Author(s): Shiping Wen; Tingwen Huang; Xinghuo Yu; Michael Z. Q. Chen; Zhigang Zeng
Pages: 1048- 1057

5. Fault Detection and Isolation for Affine Fuzzy Systems With Sensor Faults
Author(s): Huimin Wang; Guang-Hong Yang; Dan Ye
Pages: 1058- 1071

6. Knowledge Measure for Atanassov's Intuitionistic Fuzzy Sets
Author(s): Kaihong Guo
Pages: 1072- 1078

7. Takagi–Sugeno–Kang Transfer Learning Fuzzy Logic System for the Adaptive Recognition of Epileptic Electroencephalogram Signals
Author(s): Changjian Yang; Zhaohong Deng; Kup-Sze Choi; Shitong Wang
Pages: 1079- 1094

8. A Survey of Adaptive Fuzzy Controllers: Nonlinearities and Classifications
Author(s): Meng Joo Er; Sayantan Mandal
Pages: 1095- 1107

9. Optimal Design of Constraint-Following Control for Fuzzy Mechanical Systems
Author(s): Ruiying Zhao; Ye-Hwa Chen; Shengjie Jiao
Pages: 1108- 1120

10. Multiscale Opening of Conjoined Fuzzy Objects: Theory and Applications
Author(s): Punam K. Saha; Subhadip Basu; Eric A. Hoffman
Pages: 1121- 1133

11. Decentralized State Feedback Control of Uncertain Affine Fuzzy Large-Scale Systems With Unknown Interconnections
Author(s): Huimin Wang; Guang-Hong Yang
Pages: 1134- 1146

12. Fuzzy Adaptive Control With State Observer for a Class of Nonlinear Discrete-Time Systems With Input Constraint
Author(s): Yan-Jun Liu; Shaocheng Tong; Dong-Juan Li; Ying Gao
Pages: 1147- 1158

13. Fuzzy-Based Goal Representation Adaptive Dynamic Programming
Author(s): Yufei Tang; Haibo He; Zhen Ni; Xiangnan Zhong; Dongbin Zhao; Xin Xu
Pages: 1159- 1175

14. Nonparametric Statistical Active Contour Based on Inclusion Degree of Fuzzy Sets
Author(s): Maoguo Gong; Hao Li; Xiang Zhang; Qiunan Zhao; Bin Wang
Pages: 1176- 1192

15. The Role of Crisp Elements in Fuzzy Ontologies: The Case of Fuzzy OWL 2 EL
Author(s): Fernando Bobillo
Pages: 1193- 1209

16. Transfer Prototype-Based Fuzzy Clustering
Author(s): Zhaohong Deng; Yizhang Jiang; Fu-Lai Chung; Hisao Ishibuchi; Kup-Sze Choi; Shitong Wang
Pages: 1210- 1232

17. Observer-Based Fuzzy Control for Nonlinear Networked Systems Under Unmeasurable Premise Variables
Author(s): Hongyi Li; Chengwei Wu; Shen Yin; Hak-Keung Lam
Pages: 1233- 1245

18. Adaptive Fuzzy Hysteresis Internal Model Tracking Control of Piezoelectric Actuators With Nanoscale Application
Author(s): Pengzhi Li; Peiyue Li; Yongxin Sui
Pages: 1246- 1254

Monday, November 21, 2016

Weeky Review 21 November 2016

Below are some of the interesting links I Tweeted about in the last week.

  1. The AI market is predicted to keep growing: http://www.nextbigfuture.com/2016/10/ai-market-is-projected-to-grow-from-8.html 
  2. Making music with neural networks: http://www.theregister.co.uk/2016/11/11/ai_pop_music_maker/ 
  3. Point and click chatbot builder: https://techcrunch.com/2016/11/10/kitt-ais-chartflow-helps-you-build-better-chatbots/ 
  4. Implementing machine learning algorithms in parallel using GPU: http://www.kdnuggets.com/2016/11/parallelism-machine-learning-gpu-cuda-threading.html 
  5. Spotting insider trading with data mining: https://www.datanami.com/2016/11/08/sec-mines-data-spot-insider-trading/ 
  6. A descriptive overview of convolutional neural networks: http://www.kdnuggets.com/2016/11/intuitive-explanation-convolutional-neural-networks.html 
  7. The current state of machine intelligence: http://www.datasciencecentral.com/profiles/blogs/the-current-state-of-machine-intelligence-3-0 
  8. Overview of computer vision: https://techcrunch.com/2016/11/13/wtf-is-computer-vision/ 
  9. Examining the relationships we have with present primitive AI: https://techcrunch.com/2016/11/13/defining-our-relationship-with-early-ai/ 
  10. An argument that it makes more economic sense for AI to replace highly-paid workers first: http://www.theregister.co.uk/2016/11/14/the_sharks_of_ai_will_attack_expensive_and_scarce_workers_faster_than_they_eat_drivers/ 
  11. Adobe is developing Sensei, its own intelligent assisstant: https://techcrunch.com/2016/11/14/adobe-makes-big-bets-on-ai-and-the-public-cloud/ 
  12. Has Microsoft made a break-through in machine language comprehension? http://www.techrepublic.com/article/microsoft-has-found-a-way-to-bring-human-language-intelligence-to-our-dumb-computers/ 
  13. It seems that Facebook uses machine learning to identify fake news content: https://techcrunch.com/2016/11/14/facebook-fake-news/ 
  14. The shortcomings of deep learning: http://www.kdnuggets.com/2016/11/shortcomings-deep-learning.html 
  15. Getting to grips with neural networks with Google's AI Experiments showcase: https://techcrunch.com/2016/11/15/googles-ai-experiments-help-you-understand-neural-networks-by-playing-with-them 
  16. Some predictions on the future of artificial intelligence: http://www.kdnuggets.com/2016/11/13-forecasts-on-artificial-intelligence.html 
  17. An AI-based task manager: https://techcrunch.com/2016/11/15/gluru/ But is it better than my textfile named ToDo.txt?
  18. Semantic Scholar, an AI-based search engine for research papers: https://techcrunch.com/2016/11/11/scientists-gain-a-versatile-modern-search-engine-with-the-ai-powered-semantic-scholar/ 
  19. Can AI replace HR? https://www.linkedin.com/pulse/can-robots-replace-hr-michael-gretczko?trk=hp-feed-article-title-comment 
  20. Machine learning based upsampling of images: http://www.theverge.com/2016/11/16/13649016/google-machine-learning-low-res-image-raisr 
  21. The crucial elements missing from chatbot AI: http://www.techrepublic.com/article/mobile-ai-chatbot-intelligence-masquerading-as-the-real-deal/ 
  22. Google's ANN-based doodle classifier: http://www.theverge.com/2016/11/15/13641876/google-ai-experiments-quick-draw-image-recognition-game 
  23. OpenAI has chosen Microsoft Azure as its cloud platform of choice: http://www.techrepublic.com/article/microsoft-partners-with-openai-to-advance-ai-research-with-azure/ 
  24. Google is expanding its cloud-based AI services: http://www.theverge.com/2016/11/15/13640420/google-cloud-service-machine-learning-ai-translation-computer-vision 
  25. Nexar is using machine learning in car dash cams to predict collisions: https://techcrunch.com/2016/11/15/nexars-vehicle-to-vehicle-network-will-use-dash-cam-ai-to-prevent-accidents/ 
  26. The future of AI is inseparable from humans: http://www.theverge.com/a/verge-2021/humanity-and-ai-will-be-inseparable 
  27. List of and commentaries on useful tools for building chatbots: https://chatbotsmagazine.com/the-tools-every-bot-creator-must-know-c0e9dd685094#.2fclmqz8w 
  28. Colour me skeptical about the claim that the system recognises handwriting better than humans: https://techcrunch.com/2016/11/17/searchink-unlocking-the-handwritten-past-and-present-with-machine-learning/ 
  29. Someone who spent more time talking to bots than their spouse wouldn't have a spouse for long: https://www.datanami.com/2016/11/16/ai-powered-bots-gearing-up-serve-you/ 
  30. Overview of opinion mining: http://dataconomy.com/opinion-mining-extracting-opinions/ 
  31. Classifying porn with ANN: http://www.theregister.co.uk/2016/1/18/ai_gives_smut_peddlers_helping_hand/ 
  32. I suspect this is a case of either seriously biased data or outright fraud: http://www.theregister.co.uk/2016/11/18/ai_can_tell_if_youre_a_criminal/ 
  33. Where to apply machine learning first in your business: http://techemergence.com/where-to-apply-machine-learning-first/ 
  34. Bias in machine learning models and how to prevent it: http://www.techrepublic.com/article/bias-in-machine-learning-and-how-to-stop-it/ 
  35. Automated medical diagnostic tools are still not as good as human doctors: http://spectrum.ieee.org/the-human-os/biomedical/diagnostics/doctors-still-struggle-to-make-the-most-of-computer-aided-diagnosis/?utm_source=humanosalert&utm_medium=email&utm_campaign=111616 
  36. British government report on the future implications of AI: https://www.gov.uk/government/uploads/system/uploads/attachment_data/file/566075/gs-16-19-artificial-intelligence-ai-report.pdf 
  37. Howto: Deep learning-based object recognition in Microsoft Cognitive Toolkit: https://blogs.technet.microsoft.com/machinelearning/2016/10/25/how-to-train-a-deep-learned-object-detection-model-in-cntk/ 
  38. Why "Reply All" is not a good idea: http://www.businessinsider.com.au/reply-all-email-chain-1-2-million-nhs-employees-2016-11?r=US&IR=T