Monday, June 12, 2017

IEEE Transactions on Fuzzy System, Volume 25, Issue 3, June 2017

1. A Profit Maximizing Solid Transportation Model Under a Rough Interval Approach
Author(s): A. Das, U. Kumar Bera and M. Maiti
Pages: 485-498

2. Design of State Feedback Adaptive Fuzzy Controllers for Second-Order Systems Using a Frequency Stability Criterion
Author(s): K. Wiktorowicz
Pages: 499-510

3. Dynamic Output-Feedback Dissipative Control for T–S Fuzzy Systems With Time-Varying Input Delay and Output Constraints
Author(s): H. D. Choi, C. K. Ahn, P. Shi, L. Wu and M. T. Lim
Pages: 511-526

4. Adaptive Predefined Performance Control for MIMO Systems With Unknown Direction via Generalized Fuzzy Hyperbolic Model
Author(s): L. Liu, Z. Wang, Z. Huang and H. Zhang
Pages: 527-542

5. Revisiting Fuzzy Set and Fuzzy Arithmetic Operators and Constructing New Operators in the Land of Probabilistic Linguistic Computing
Author(s): S. C. Ngan
Pages: 543-555

6. Asymptotic Fuzzy Tracking Control for a Class of Stochastic Strict-Feedback Systems
Author(s): C. Chen, Z. Liu, Y. Zhang, C. L. P. Chen and S. Xie
Pages: 556-568

7. Approaches to T–S Fuzzy-Affine-Model-Based Reliable Output Feedback Control for Nonlinear Itô Stochastic Systems
Author(s): Y. Wei, J. Qiu, H. K. Lam and L. Wu
Pages: 569-583

8. Pixel Modeling Using Histograms Based on Fuzzy Partitions for Dynamic Background Subtraction
Author(s): Z. Zeng, J. Jia, D. Yu, Y. Chen and Z. Zhu
Pages: 584-593

9. Varying Spread Fuzzy Regression for Affective Quality Estimation
Author(s): K. Y. Chan and U. Engelke
Pages: 594-613

10. Ranking of Multidimensional Uncertain Information Based on Metrics on the Fuzzy Ellipsoid Number Space
Author(s): G. Wang and Y. Li
Pages: 614-626

11. The Spatial Disaggregation Problem: Simulating Reasoning Using a Fuzzy Inference System
Author(s): J. Verstraete
Pages: 627-641

12. Adaptive Fuzzy Backstepping Tracking Control for Strict-Feedback Systems With Input Delay
Author(s): H. Li, L. Wang, H. Du and A. Boulkroune
Pages: 642-652

13. Dynamic Output Feedback-Predictive Control of a Takagi–Sugeno Model With Bounded Disturbance
Author(s): B. Ding and H. Pan
Pages: 653-667

14. Command-Filtered-Based Fuzzy Adaptive Control Design for MIMO-Switched Nonstrict-Feedback Nonlinear Systems
Author(s): Y. Li and S. Tong
Pages: 668-681

15. Type-2 Fuzzy Alpha-Cuts
Author(s): H. Hamrawi, S. Coupland and R. John
Pages: 682-692

16. A New Look at Type-2 Fuzzy Sets and Type-2 Fuzzy Logic Systems
Author(s): L. X. Wang
Pages: 693-706

17. LMI-Based Stability Analysis for Piecewise Multi-affine Systems
Author(s): A. T. Nguyen, M. Sugeno, V. Campos and M. Dambrine
Pages: 707-714

18. An Extended Type-Reduction Method for General Type-2 Fuzzy Sets
Author(s): B. K. Xie and S. J. Lee
Pages: 715-724

19. Critique of “A New Look at Type-2 Fuzzy Sets and Type-2 Fuzzy Logic Systems"
Author(s): J. M. Mendel and D. Wu
Pages: 725-727

Saturday, June 10, 2017

Weekly Review 9 June 2017

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

  1.  Microsoft has released version 2.0 of its deep learning toolkit: https://techcrunch.com/2017/06/01/microsoft-releases-version-2-0-of-its-deep-learning-toolkit/
  2. An overview of tensors, as used in TensorFlow: http://www.kdnuggets.com/2017/06/deep-learning-demystifying-tensors.html 
  3. How rat brains are inspiring the next generation of artificial neural networks: http://spectrum.ieee.org/biomedical/imaging/ai-designers-find-inspiration-in-rat-brains
  4. Despite the article title Watson isn't diagnosing cancer, it's helping plan how to treat it: https://news.fastcompany.com/ibm-says-watson-healths-ai-is-getting-really-good-at-diagnosing-cancer-4039394
  5. An overview of neurocomputing hardware - hardware inspired by the brain: http://spectrum.ieee.org/computing/hardware/the-brain-as-computer-bad-at-math-good-at-everything-else
  6. Four tips for job interviews - these apply to interviews for academic positions as well: https://www.seek.co.nz/career-advice/4-ways-to-prepare-for-an-interview
  7. Three things intelligent machines need to copy from the human brain: http://spectrum.ieee.org/computing/software/what-intelligent-machines-need-to-learn-from-the-neocortex
  8. Hawkins' book "On Intelligence" is very good, must re-read sometime soon: http://spectrum.ieee.org/computing/software/what-intelligent-machines-need-to-learn-from-the-neocortex
  9. So valedictorians (dux in NZ) go on to lead good lives, but seldom achieve particularly highly: http://time.com/money/4779223/valedictorian-success-research-barking-up-wrong/
  10. Why we need to build an artificial brain or, why neuromorphic computing is a good idea: http://spectrum.ieee.org/computing/hardware/can-we-copy-the-brain
  11. We could build an artificial brain now, but probably wouldn't want to pay for it: http://spectrum.ieee.org/computing/hardware/we-could-build-an-artificial-brain-right-now
  12. If you're looking for a job, be careful what you say on social media (including Twitter!) http://jobs.ieee.org/jobs/content/Looking-for-a-Job-Double-Check-Your-Social-Media-Accounts-First-2017-04-18
  13. Deep learning can't tell what Homer Simpson is doing. Or, why DeepMind built an enormous database of videos: http://spectrum.ieee.org/tech-talk/robotics/artificial-intelligence/deepmind-shows-ai-has-trouble-seeing-homer-simpson-actions
  14. If I am advertising for a new staff member, I will read the cover letters of applicants: https://www.seek.co.nz/career-advice/does-anyone-actually-read-cover-letters
  15. Using AI in children's educational apps: https://techcrunch.com/2017/06/07/sesame-workshop-and-ibm-team-up-to-test-a-new-a-i-powered-teaching-method/
  16. Combining relational networks with deep learning: https://www.theregister.co.uk/2017/06/09/deepmind_teaches_ai_to_reason/
  17. Paper on adding relational reasoning to deep neural networks: https://arxiv.org/abs/1706.01427
  18. How AI can make things worse, instead of better: http://www.kdnuggets.com/2017/06/unintended-consequences-machine-learning.html

Friday, June 9, 2017

Neural Networks, Volume 92, Pages 1-98, August 2017

Special Issue "Advances in Cognitive Engineering Using Neural Networks" Edited by Minho Lee, Steven Bressler and Robert Kozma

1. Advances in Cognitive Engineering Using Neural Networks  
Author(s): Minho Lee, Steven Bressler, Robert Kozma
Pages: 1-2

2. How can a recurrent neurodynamic predictive coding model cope with fluctuation in temporal patterns? Robotic experiments on imitative interaction   
Author(s): Ahmadreza Ahmadi, Jun Tani
Pages: 3-16

3. Dual-memory neural networks for modeling cognitive activities of humans via wearable sensors   
Author(s): Sang-Woo Lee, Chung-Yeon Lee, Dong-Hyun Kwak, Jung-Woo Ha, Jeonghee Kim, Byoung-Tak Zhang
Pages: 17-28

4. Understanding human intention by connecting perception and action learning in artificial agents   
Author(s): Sangwook Kim, Zhibin Yu, Minho Lee
Pages: 29-38

5. Application of structured support vector machine backpropagation to a convolutional neural network for human pose estimation   
Author(s): Peerajak Witoonchart, Prabhas Chongstitvatana
Pages: 39-46

6. Reprint of “Two-stage sparse coding of region covariance via Log-Euclidean kernels to detect saliency”   
Author(s): Ying-Ying Zhang, Cai Yang, Ping Zhang
Pages: 47-59

7. Evaluating deep learning architectures for Speech Emotion Recognition   
Author(s): Haytham M. Fayek, Margaret Lech, Lawrence Cavedon
Pages: 60-68

8. Weighted spatial based geometric scheme as an efficient algorithm for analyzing single-trial EEGS to improve cue-based BCI classification   
Author(s): Fatemeh Alimardani, Reza Boostani, Benjamin Blankertz
Pages: 69-76

9. Prediction of advertisement preference by fusing EEG response and sentiment analysis   
Author(s): Himaanshu Gauba, Pradeep Kumar, Partha Pratim Roy, Priyanka Singh, Debi Prosad Dogra, Balasubramanian Raman
Pages: 77-88

10. A Hypergraph and Arithmetic Residue-based Probabilistic Neural Network for classification in Intrusion Detection Systems   
Author(s): M.R. Gauthama Raman, Nivethitha Somu, Kannan Kirthivasan, V.S. Shankar Sriram
Pages: 89-97

Thursday, June 8, 2017

IEEE Transactions on Emerging Topics in Computational Intelligence, Volume 1, Issue 3, June 2017

Special Issue on Computational Intelligence for Software Engineering and Services Computing

1. WebAPIRec: Recommending Web APIs to Software Projects via Personalized Ranking
Author(s): F. Thung, R. J. Oentaryo, D. Lo and Y. Tian
Pages: 145-156

2. Context-Aware, Adaptive, and Scalable Android Malware Detection Through Online Learning
Author(s): A. Narayanan, M. Chandramohan, L. Chen and Y. Liu
Pages: 157-175

3. A Model-Driven Approach to Enable Adaptive QoS in DDS-Based Middleware
Author(s): J. F. Inglés-Romero, A. Romero-Garcés, C. Vicente-Chicote and J. Martínez
Pages: 176-187

4. Search-Based Energy Optimization of Some Ubiquitous Algorithms
Author(s): A. E. I. Brownlee, N. Burles and J. Swan
Pages: 188-201

5. Dynamic Selection of Classifiers in Bug Prediction: An Adaptive Method
Author(s): D. Di Nucci, F. Palomba, R. Oliveto and A. De Lucia
Pages: 202-212

6. Epistasis Based ACO for Regression Test Case Prioritization
Author(s): Y. Bian, Z. Li, R. Zhao and D. Gong
Pages: 213-223

7. A Model-Driven Methodology for the Design of Autonomic and Cognitive IoT-Based Systems: Application to Healthcare
Author(s): E. Mezghani, E. Exposito and K. Drira
Pages: 224-234

Saturday, June 3, 2017

Complex & Intelligent Systems, Vol. 3, No. 2, June 2017

1. Constructing enhanced default theories incrementally
Author(s): Ghassan Beydoun, Achim Hoffmann, Asif Gill
Pages: 83-92

2. Age estimation from a face image in a selected gender-race group based on ranked local binary patterns
Author(s): Andrey Rybintsev
Pages: 93-104

3. An insight into imbalanced Big Data classification: outcomes and challenges
Author(s): Alberto Fernández, Sara del Río, Nitesh V. Chawla, Francisco Herrera
Pages: 105-120

4. An evolutionary hybrid method to predict pistachio price
Author(s): Azim Heydari, Farshid Keynia, Nasser Shahsavari-Pour, Reza Sedaghat
Pages: 121-132

5. Big data for secure healthcare system: a conceptual design
Author(s): Bikash Kanti Sarkar
Pages: 133-151

Friday, June 2, 2017

Weeky Review 2 June 2017

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

  1. An interview on how deep learning is used to infer human emotions: https://www.oreilly.com/ideas/how-ai-is-used-to-infer-human-emotion
  2. Why quantum computing is necessary for the future of AI: http://theinstitute.ieee.org/ieee-roundup/blogs/blog/artificial-intelligences-potential-will-be-realized-by-quantum-computing 
  3. Who is liable when an AI misdiagnoses a patient? https://qz.com/989137/when-a-robot-ai-doctor-misdiagnoses-you-whos-to-blame/ A society being over-litigious makes this a problem.
  4. Shifting jobs in IT - what is going to become obsolete, and what is going to become more important: http://www.infoworld.com/article/3196022/it-careers/the-working-dead-it-jobs-bound-for-extinction.html
  5. AlphaGo has defeated the world's best human Go player: https://www.theguardian.com/technology/2017/may/23/alphago-google-ai-beats-ke-jie-china-go
  6. "Music" composed by a neuromorphic chip: http://spectrum.ieee.org/tech-talk/robotics/artificial-intelligence/a-neuromorphic-chip-that-makes-music 
  7. AI in healthcare works better alongside humans, not replacing them: http://www.informationweek.com/healthcare/analytics/ai-works-better-with-human-intelligence-too/d/d-id/1328903?
  8. The relationship between AI and statistics (and abuse thereof): http://www.theregister.co.uk/2017/05/24/fear_of_statistics/ 
  9. AlphaGo has defeated the world's best human Go player in 3 out of 3 matches: https://techcrunch.com/2017/05/24/alphago-beats-planets-best-human-go-player-ke-jie/ 
  10. Time for academics to again control academic journals, rather than greedy, predatory corporations: https://www.theguardian.com/higher-education-network/2017/may/25/its-time-for-academics-to-take-back-control-of-research-journals 
  11. Using facial recognition technology to track if students are paying attention to a lecture: https://www.theverge.com/2017/5/26/15679806/ai-education-facial-recognition-nestor-france 
  12. A list of free tools for visualising data: http://computerworld.com/article/2507728/enterprise-applications/enterprise-applications-22-free-tools-for-data-visualization-and-analysis.html
  13. How could we tell if a general AI were truly conscious? http://spectrum.ieee.org/computing/hardware/can-we-quantify-machine-consciousness 
  14. Applying deep learning to sports analytics: https://www.datanami.com/2017/05/26/deep-learning-revolutionize-sports-analytics-heres/ 
  15. Is Apple developing a neural network chip? https://www.theverge.com/2017/5/26/15702248/apple-neural-engine-ai-chip-iphone-ipad 
  16. Not so much racist algorithms, as the benchmark data sets are lacking diversity: https://www.theguardian.com/technology/2017/may/28/joy-buolamwini-when-algorithms-are-racist-facial-recognition-bias 
  17. An AI that detects other AI: https://motherboard.vice.com/en_us/article/this-dystopian-wearable-detects-ais-pretending-to-be-humans 
  18. Brief explanation of what an ontology is: http://www.kdnuggets.com/2017/05/ontology-simplest-definition.html 
  19. Quite a bit of disagreement over when AI will overtake humans: http://www.theregister.co.uk/2017/05/26/job_automation_by_ai_timeline/ 
  20. Why it's a silly idea to try to teach everyone to code: http://www.techrepublic.com/article/why-the-notion-that-everyone-should-learn-to-code-is-complete-rubbish/ 
  21. The challenges of identifying trust with machine learning: http://www.kdnuggets.com/2017/05/challenges-machine-learning-trust.html 
  22. The second wave of AI, and how it will impact humanity: http://www.techrepublic.com/article/why-ai-will-force-businesses-to-rethink-balance-between-the-work-of-humans-and-machines/ 
  23. Nuts-ml, a Python library intended to preprocess data for machine learning algorithms: http://www.kdnuggets.com/2017/05/data-pre-processing-deep-learning-nuts-ml.html 
  24. How Google is using machine learning to improve security in GMail: http://www.techrepublic.com/article/google-looks-to-machine-learning-to-boost-security-in-gmail/
  25. Is China going to outstrip the USA in AI? https://www.nytimes.com/2017/05/27/technology/china-us-ai-artificial-intelligence.html?_r=1
  26. A system that uses a neural network to generate code from a screenshot of a GUI: https://siliconangle.com/blog/2017/05/28/startup-uses-ai-create-gui-source-code-simple-screenshots/
  27. The New Zealand AI Forum is launching: http://www.nzherald.co.nz/business/news/article.cfm?c_id=3&objectid=11867287


IEEE Transactions on Neural Networks and Learning Systems, Volume 28, Issue 6, June 2017

1. Holographic Graph Neuron: A Bioinspired Architecture for Pattern Processing
Author(s): Denis Kleyko; Evgeny Osipov; Alexander Senior; Asad I. Khan; Yaşar Ahmet Şekerciogğlu
Page(s): 1250 - 1262

2. Robust Joint Graph Sparse Coding for Unsupervised Spectral Feature Selection
Author(s): Xiaofeng Zhu; Xuelong Li; Shichao Zhang; Chunhua Ju; Xindong Wu
Page(s): 1263 - 1275

3. Rate of Convergence of the FOCUSS Algorithm
Author(s): Kan Xie; Zhaoshui He; Andrzej Cichocki; Xiaozhao Fang
Page(s): 1276 - 1289

4. Action and Event Recognition in Videos by Learning From Heterogeneous Web Sources
Author(s): Li Niu; Xinxing Xu; Lin Chen; Lixin Duan; Dong Xu
Page(s): 1290 - 1304

5. Mapping Temporal Variables Into the NeuCube for Improved Pattern Recognition, Predictive Modeling, and Understanding of Stream Data
Author(s): Enmei Tu; Nikola Kasabov; Jie Yang
Page(s): 1305 - 1317

6. Adaptive Neural Control of Uncertain MIMO Nonlinear Systems With State and Input Constraints
Author(s): Ziting Chen; Zhijun Li; C. L. Philip Chen
Page(s): 1318 - 1330

7. Co-Operative Coevolutionary Neural Networks for Mining Functional Association Rules
Author(s): Bing Wang; Kathryn E. Merrick; Hussein A. Abbass
Page(s): 1331 - 1344

8. Quantum Ensemble Classification: A Sampling-Based Learning Control Approach
Author(s): Chunlin Chen; Daoyi Dong; Bo Qi; Ian R. Petersen; Herschel Rabitz
Page(s): 1345 - 1359

9. A Regularizer Approach for RBF Networks Under the Concurrent Weight Failure Situation
Author(s): Chi-Sing Leung; Wai Yan Wan; Ruibin Feng
Page(s): 1360 - 1372

10. Clustering Through Hybrid Network Architecture With Support Vectors
Author(s): Emrah Ergul; Nafiz Arica; Narendra Ahuja; Sarp Erturk
Page(s): 1373 - 1385

11. Design and Application of a Variable Selection Method for Multilayer Perceptron Neural Network With LASSO
Author(s): Kai Sun; Shao-Hsuan Huang; David Shan-Hill Wong; Shi-Shang Jang
Page(s): 1386 - 1396

12. Robustly Fitting and Forecasting Dynamical Data With Electromagnetically Coupled Artificial Neural Network: A Data Compression Method
Author(s): Ziyin Wang; Mandan Liu; Yicheng Cheng; Rubin Wang
Page(s): 1397 - 1410

13. Efficient Training of Supervised Spiking Neural Network via Accurate Synaptic-Efficiency Adjustment Method
Author(s): Xiurui Xie; Hong Qu; Zhang Yi; Jürgen Kurths
Page(s): 1411 - 1424

14. Sparseness Analysis in the Pretraining of Deep Neural Networks
Author(s): Jun Li; Tong Zhang; Wei Luo; Jian Yang; Xiao-Tong Yuan; Jian Zhang
Page(s): 1425 - 1438

15. Barrier Function-Based Neural Adaptive Control With Locally Weighted Learning and Finite Neuron Self-Growing Strategy
Author(s): Zi-Jun Jia; Yong-Duan Song
Page(s): 1439 - 1451

16. Label Propagation via Teaching-to-Learn and Learning-to-Teach
Author(s): Chen Gong; Dacheng Tao; Wei Liu; Liu Liu; Jie Yang
Page(s): 1452 - 1465

17. Optimized Kernel Entropy Components
Author(s): Emma Izquierdo-Verdiguier; Valero Laparra; Robert Jenssen; Luis Gómez-Chova; Gustau Camps-Valls
Page(s): 1466 - 1472

18. Quantized Iterative Learning Consensus Tracking of Digital Networks With Limited Information Communication
Author(s): Wenjun Xiong; Xinghuo Yu; Yao Chen; Jie Gao
Page(s): 1473 - 1480

19. Biomimetic Hybrid Feedback Feedforward Neural-Network Learning Control
Author(s): Yongping Pan; Haoyong Yu
Page(s): 1481 - 1487

Tuesday, May 23, 2017

Weekly Review 23 May 2017

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

  1. The importance of visual (image) data to future developments in AI: https://techcrunch.com/2017/05/17/the-war-over-artificial-intelligence-will-be-won-with-visual-data/
  2. One-shot visual learning of tasks from humans in VR with neural networks: http://www.theregister.co.uk/2017/05/16/openai_teaches_robot_to_learn_from_human_demonstrations_in_vr/ 
  3. Detecting masks and guns in CCTV feeds, using deep learning: https://techcrunch.com/2017/05/16/deep-science-ai-monitors-security-feeds-for-masks-and-guns-to-quicken-response-times/ 
  4. Machine learning can eliminate bias in hiring, but only if the training data is unbiased: http://www.techrepublic.com/article/how-machine-learning-can-help-companies-eliminate-bias-in-hiring/ 
  5. Diagnosing concussions with deep learning: https://techcrunch.com/2017/05/16/brightlamp-wants-to-use-ai-to-spot-concussions/ 
  6. Conference submission deadline: ICONIP 2017 https://computational-intelligence.blogspot.com/2017/05/conference-submission-deadline-iconip.html 
  7. How to build a text classifier utilising machine learning: https://blog.monkeylearn.com/how-to-create-text-classifiers-machine-learning/
  8. This guy does not like the R language, and not without some good reasons: http://www.datasciencecentral.com/profiles/blogs/why-r-is-bad-for-you 
  9. Academic resumes tend to be long, but it helps to put the main points on the first or second page: https://www.seek.co.nz/career-advice/5-things-employers-wish-they-could-say-about-your-resume
  10. 5 different types of recommenders explained: http://www.datasciencecentral.com/profiles/blogs/5-types-of-recommenders 
  11. Google has brought TensorFlow to Android: https://techcrunch.com/2017/05/17/googles-tensorflow-lite-brings-machine-learning-to-android-devices/
  12. A neural network that invents new paint colours and names: http://lewisandquark.tumblr.com/post/160776374467/new-paint-colors-invented-by-neural-network "Clardic fug" is probably my favourite paint name.
  13. How to build, and convert into code, decisions trees in Python: http://www.kdnuggets.com/2017/05/simplifying-decision-tree-interpretation-decision-rules-python.html 
  14. Google's AI is starting to manage relationships between people: https://www.theverge.com/2017/5/19/15660610/google-photos-ai-relationship-emotional-labor 
  15. AI in agriculture-a bit vague about what the AI is, though: http://www.datasciencecentral.com/profiles/blogs/artificial-intelligence-in-agriculture-what-s-next 
  16. Google is making its Tensor Processing Units available via the cloud: https://www.datanami.com/2017/05/18/cloud-tpu-bolsters-googles-ai-first-strategy/ 
  17. An argument that AI is not driving cloud adoption: https://www.theregister.co.uk/2017/05/18/baby_steps_not_ai_drives_cloud_growth/ 
  18. So Canada's developing a nation-wide AI strategy? http://www.datasciencecentral.com/profiles/blogs/pan-canadian-artificial-intelligence-strategy 
  19. An AI that is "outrageous in a great way": http://www.theregister.co.uk/2017/05/22/deeptingle_ai_transforms_writing/


Monday, May 22, 2017

Neural Networks, Volume 91, Pages 1-102, July 2017

1. Lagrange image-exponential stability and image-exponential convergence for fractional-order complex-valued neural networks   
Author(s): Jigui Jian, Peng Wan
Pages: 1-10

2. Event-triggered image filtering for delayed neural networks via sampled-data   
Author(s): Emel Arslan, R. Vadivel, M. Syed Ali, Sabri Arik
Pages:
11-21

3. Recursive least mean image-power Extreme Learning Machine   
Author(s): Jing Yang, Feng Ye, Hai-Jun Rong, Badong Chen
Pages:
22-33

4. Probabilistic lower bounds for approximation by shallow perceptron networks   
Author(s): Věra Kůrková, Marcello Sanguineti
Pages:
34-41

5. A framework for parallel and distributed training of neural networks   
Author(s): Simone Scardapane, Paolo Di Lorenzo
Pages:
42-54

6. Robust stability analysis of quaternion-valued neural networks with time delays and parameter uncertainties   
Author(s): Xiaofeng Chen, Zhongshan Li, Qiankun Song, Jin Hu, Yuanshun Tan
Pages:
55-65

7. Spatiotemporal signal classification via principal components of reservoir states   
Author(s): Ashley Prater
Pages:
66-75

8. Hopfield networks as a model of prototype-based category learning: A method to distinguish trained, spurious, and prototypical attractors   
Author(s): Chris Gorman, Anthony Robins, Alistair Knott
Pages: 76-84

9. A universal multilingual weightless neural network tagger via quantitative linguistics   
Author(s):  Hugo C.C. Carneiro, Carlos E. Pedreira, Felipe M.G. França, Priscila M.V. Lima
Pages: 85-101


Saturday, May 20, 2017

IEEE Transactions on Fuzzy Systems, Volume 25, Issue 2, April 2017

Guest EditorialSpecial Issue on Fuzzy Techniques in Financial Modeling and Simulation
Authors: Antoaneta Serguieva, Hisao Ishibuchi, Ronald R Yager, Vasile Palade
Pages: 245-248

1.  Multiobjective Evolutionary Optimization of Type-2 Fuzzy Rule-Based Systems for Financial Data Classification
Authors: Michela Antonelli, Dario Bernardo, Hani Hagras, Francesco Marcelloni
Pages: 249-264

2. Rough Information Set and Its Applications in Decision Making
Author: Manish Aggarwal
Pages: 265-276

3.  Modeling Stock Price Dynamics With Fuzzy Opinion Networks
Author: Li-Xin Wang
Pages: 277-301

4.  Evolving Possibilistic Fuzzy Modeling for Realized Volatility Forecasting With Jumps
Authors: Leandro Maciel, Rosangela Ballini, Fernando Gomide
Pages: 302-314

5.  FN-TOPSIS: Fuzzy Networks for Ranking Traded Equities
Authors: Abdul Malek Yaakob, Antoaneta Serguieva, Alexander Gegov
Pages: 215-332

6.  Stock Picking by Probability–Possibility Approaches
Authors: Jean-Marc Le Caillec, Alya Itani, Didier Guriot, Yves Rakotondratsimba
Pages: 333-349

7.  Mean-Variance Portfolio Selection with the Ordered Weighted Average
Authors: Sigifredo Laengle, Gino Loyola, Jos´e M. Merig´o
Pages: 350-362

8. Adaptive Budget-Portfolio Investment Optimization Under Risk Tolerance Ambiguity
Authors: Shuming Wang, Bo Wang, Junzo Watada
Pages: 363-376

9.  Fuzzy Decision Theory Based Metaheuristic Portfolio Optimization and Active Rebalancing Using Interval Type-2 Fuzzy Sets
Author: G. A. Vijayalakshmi Pai
Pages: 377-391

10. Fuzzy Approaches to Option Price Modeling
Authors: Silvia Muzzioli and Bernard De Baets
Pages: 392-401

11.  Option Pricing With Application of Levy Processes and the Minimal Variance Equivalent Martingale Measure Under Uncertainty
Authors: Piotr Nowak and Michał Pawłowski
Pages: 402-416

12. Quanto European Option Pricing With Ambiguous Return Rates and Volatilities
Authors: Junfei Zhang and Shoumei Li
Pages: 417-424

13. A Comparison of Bidding Strategies for Online Auctions Using Fuzzy Reasoning and Negotiation Decision Functions
Authors: Preetinder Kaur, Madhu Goyal, Jie Lu
Pages: 425-438

14. Fuzzy Dynamical System Scenario Simulation-Based Cross-Border Financial Contagion Analysis: A Perspective From International Capital Flows
Authors: Xinxin Xu, Ziqiang Zeng, Jiuping Xu, Mengxiang Zhang
Pages: 439-459

15.  Multiobjective Investment Policy for a Nonlinear Stochastic Financial System: A Fuzzy Approach
Authors: Chien-Feng Wu and Weihai Zhang
Pages: 460-474

16.  A Fuzzy Control Model for Restraint of Bullwhip Effect in Uncertain Closed-Loop Supply Chain With Hybrid Recycling Channels
Authors: Songtao Zhang, Xue Li, Chunyang Zhang
Pages: 475-482

Thursday, May 18, 2017

Wednesday, May 17, 2017

Weekly Review 16 May 2017

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

  1. Ten ways AI is being used in retail: https://www.techemergence.com/artificial-intelligence-retail-10-present-future-use-cases/
  2. Using machine learning to detect lung cancer in x-rays: https://techcrunch.com/2017/05/08/chinese-startup-infervision-emerges-from-stealth-with-an-ai-tool-for-diagnosing-lung-cancer/ 
  3. We are in the golden age of AI: https://finance.yahoo.com/news/golden-age-solving-problems-were-093919934.html
  4. Automation technology, including AI, is going to wipe out a lot of entry-level legal jobs: https://www.axios.com/artificial-intelligence-is-coming-for-law-firms-2394154251.html
  5. Microsoft is offering a deep learning service in Azure: https://techcrunch.com/2017/05/10/microsoft-launches-a-new-service-for-training-deep-neural-networks-on-azure/ 
  6. How to select the optimal number of clusters: http://www.kdnuggets.com/2017/05/must-know-most-useful-number-clusters.html 
  7. The effect of AI on employment-only highly-educated people are really safe at the moment: http://www.techrepublic.com/article/why-automation-in-the-age-of-ai-will-change-the-way-we-think-of-work/ 
  8. Processing job descriptions with deep learning ANN: http://www.kdnuggets.com/2017/05/deep-learning-extract-knowledge-job-descriptions.html 
  9. Summarising text using reinforcement learning: https://techcrunch.com/2017/05/11/salesforce-aims-to-save-you-time-by-summarizing-emails-and-docs-with-machine-intelligence
  10. TensorFlow seems to be a bit tricky to use: http://www.theregister.co.uk/2017/05/12/tensor_flow_hands_on/ 
  11. Detecting network anomalies-that is, security threats-using machine learning: https://techcrunch.com/2017/05/12/las-vegas-taps-ai-for-cybersecurity-help/ 
  12. My SECoS algorithms (http://ecos.watts.net.nz/Algorithms/SECoS.html) have also been applied to this sort of thing: https://techcrunch.com/2017/05/12/las-vegas-taps-ai-for-cybersecurity-help/
  13. Twitter is finding tweets relevant to users using deep neural networks: https://www.datanami.com/2017/05/10/twitter-ranking-tweets-machine-learning/ 
  14. Some future trends and developments in AI: http://www.datasciencecentral.com/profiles/blogs/a-sneak-peek-at-the-future-of-artificial-intelligence-the-newes-1 
  15. Tools to automate the construction of deep learning models: https://www.enterprisetech.com/2017/05/10/automation-automation-ibm-powerai-tools-aim-ease-deep-learning-data-prep-shorten-training/ 
  16. Biased models come from biased data, but biased data is ruining people's lives: https://www.theregister.co.uk/2017/05/08/algorithmic_bias/ 
  17. It doesn't matter how good the algorithm is, if you don't put good data into it, you won't get a good model out if it. This is basic stuff.
  18. Personally I would classify deep learning as computational intelligence, but that would further confuse journalists: https://techcrunch.com/2017/05/14/pattern-recognition/ 
  19. A lot of academic success also seems to come from shameless self-promotion: http://www.techrepublic.com/article/the-it-leaders-guide-to-shameless-self-promotion-part-1/
  20. The two phases of gradient descent in deep learning: http://www.kdnuggets.com/2017/05/two-phases-gradient-descent-deep-learning.html 
  21. Using AI to detect abuse in mental health group chats: https://techcrunch.com/2017/05/15/sunrise-health/ 
  22. Facebook's platform for researching conversational AI chatbots: https://www.theverge.com/2017/5/15/15640886/facebook-parlai-chatbot-research-ai-chatbot 
  23. Before data mining, make sure that you have the legal right to mine the data you are looking at: https://techcrunch.com/2017/05/15/deepmind-nhs-health-data-deal-had-no-lawful-basis/ 
  24. THAT won't cause security problems.... http://www.techrepublic.com/article/delta-testing-facial-recognition-for-self-service-bag-check-in-at-minneapolis-airport/

Saturday, May 13, 2017

Neural Networks, Volume 90, Pages 1-112, June 2017

1. Synchronised firing patterns in a random network of adaptive exponential integrate-and-fire neuron model   
Author(s): F.S. Borges, P.R. Protachevicz, E.L. Lameu, R.C. Bonetti, K.C. Iarosz, I.L. Caldas, M.S. Baptista, A.M. Batista
Pages: 1-7

2. Forecasting stochastic neural network based on financial empirical mode decomposition   
Author(s): Jie Wang, Jun Wang
Pages: 8-20

3. A time-delay neural network for solving time-dependent shortest path problem   
Author(s): Wei Huang, Chunwang Yan, Jinsong Wang, Wei Wang
Pages: 21-28

4. Extending the Stabilized Supralinear Network model for binocular image processing   
Author(s): Ben Selby, Bryan Tripp
Pages: 29-41

5. Robust fixed-time synchronization for uncertain complex-valued neural networks with discontinuous activation functions   
Author(s): Xiaoshuai Ding, Jinde Cao, Ahmed Alsaedi, Fuad E. Alsaadi, Tasawar Hayat
Pages: 42-55

6. Collective mutual information maximization to unify passive and positive approaches for improving interpretation and generalization   
Author(s): Ryotaro Kamimura
Pages: 56-71

7. Persistent irregular activity is a result of rebound and coincident detection mechanisms: A computational study   
Author(s): Mustafa Zeki, Ahmed A. Moustafa
Pages: 72-82

8. Representation learning via Dual-Autoencoder for recommendation   
Author(s): Fuzhen Zhuang, Zhiqiang Zhang, Mingda Qian, Chuan Shi, Xing Xie, Qing He
Pages: 83-89

9. A bag-of-paths framework for network data analysis   
Author(s): Kevin Françoisse, Ilkka Kivimäki, Amin Mantrach, Fabrice Rossi, Marco Saerens
Pages: 90-111

Monday, May 8, 2017

Weekly Review 8 May 2017

Below are some of the interesting links I Tweeted about recently.
  1. AI is one of 5 ways a business can lead in the age of analytics: http://www.informationweek.com/big-data/big-data-analytics/5-keys-to-leading-in-the-age-of-analytics/a/d-id/1328693
  2. Comparison of open-source frameworks for deep learning and visual analysis: http://www.datasciencecentral.com/profiles/blogs/open-source-deep-learning-frameworks-and-visual-analytics 
  3. How to choose which machine learning algorithm to use: http://blogs.sas.com/content/subconsciousmusings/2017/04/12/machine-learning-algorithm-use/ 
  4. Sounds like a really good way to automate police prejudice: https://techcrunch.com/2017/04/30/taser-law-enforcement-technology-report/ 
  5. 5 free ebooks on machine learning: http://www.kdnuggets.com/2016/10/5-free-ebooks-machine-learning-career.html 
  6. Using ANN to produce smooth animations of human characters: https://techcrunch.com/2017/05/01/this-neural-network-could-make-animations-in-games-a-little-less-awkward/ 
  7. 5 best machine learning API: http://www.kdnuggets.com/2015/11/machine-learning-apis-data-science.html 
  8. A tool for the governance of machine learning projects and models: http://www.theregister.co.uk/2017/04/25/immuta_data_governance_tool/ Interpretability is key.
  9. Detecting strokes from brain scans using machine learning: https://techcrunch.com/2017/05/01/tackling-diagnostic-medicine-with-ai-viz-launches-a-tool-to-identify-strokes/ 
  10. Yes, Amazon Look will be used as a front-end to a fashion AI, especially if Amazon can then sell you more stuff: https://www.theverge.com/2017/5/3/15522792/amazon-echo-look-alexa-style-assistant-ai-fashion 
  11. AI is moving into the public sector, bringing worries to workers about job security: https://www.datanami.com/2017/05/03/job-worries-grow-ai-shifts-public-sector/ 
  12. This is why proof-reading is important -"pubic sector adoption of automation" https://www.datanami.com/2017/05/03/job-worries-grow-ai-shifts-public-sector/ 
  13. Finally got around to updating my online list of publications, and added some more paper uploads: http://mike.watts.net.nz/CV/mjwatts.html
  14. I have updated the list of references on applications of Evolving Connectionist Systems on my ECoS site: http://ecos.watts.net.nz/Literature/Applications.html 
  15. Swarm AI will again try to predict the outcome of the Kentucky Derby: http://www.techrepublic.com/article/how-an-ai-super-expert-will-predict-the-winner-of-the-kentucky-derby/ 
  16. An open source database of street-level images: https://techcrunch.com/2017/05/03/mapillary-open-sources-25k-street-level-images-to-train-automotive-ai-systems/ 
  17. Where AI is going: http://www.datasciencecentral.com/profiles/blogs/development-of-ai-and-its-future-state 
  18. A camera-equipped prosthetic hand uses ANN to help it grasp things: https://motherboard.vice.com/en_us/article/this-bionic-hand-uses-ai-to-grab-things-automatically 
  19. Using sckit-learn in Python to detect SPAM emails: https://appliedmachinelearning.wordpress.com/2017/01/23/email-spam-filter-python-scikit-learn/ 
  20. The swarm missed predicting the Kentucky derby this year: http://www.techrepublic.com/article/ai-misses-repeat-in-2017-kentucky-derby-but-heres-what-we-learned/ Still not sure how this is AI rather than Bayesian search
  21. Been feeling good lately, like I'm on top of things - why does this give me such a feeling of dread? https://www.theguardian.com/lifeandstyle/ng-interactive/2017/may/06/stephen-collins-on-good-times-cartoon?CMP=share_btn_tw 
  22. An overview of TensorFlow: http://www.techrepublic.com/article/tensorflow-googles-open-source-software-library-for-machine-learning-the-smart-persons-guide/

Tuesday, May 2, 2017

IEEE Transactions on Neural Networks and Learning Systems, Volume 28, Issue 5, May 2017

1. A Semisupervised Approach to the Detection and Characterization of Outliers in Categorical Data
Author(s): Dino Ienco; Ruggero G. Pensa; Rosa Meo
Pages: 1017 - 1029

2. High-Order Measurements for Residual Classifiers
Author(s): Quan Guo; Haixian Zhang; Zhang Yi
Pages: 1030 - 1042

3. High-Performance Consensus Control in Networked Systems With Limited Bandwidth Communication and Time-Varying Directed Topologies
Author(s): Huaqing Li; Guo Chen; Tingwen Huang; Zhaoyang Dong
Pages: 1043 - 1054

4. Pinning Impulsive Synchronization of Reaction–Diffusion Neural Networks With Time-Varying Delays
Author(s): Xinzhi Liu; Kexue Zhang; Wei-Chau Xie
Pages: 1055 - 1067

5. Robust Recurrent Kernel Online Learning
Author(s): Qing Song; Xu Zhao; Haijin Fan; Danwei Wang
Pages: 1068 - 1081

6. Learning Kernel Extended Dictionary for Face Recognition
Author(s): Ke-Kun Huang; Dao-Qing Dai; Chuan-Xian Ren; Zhao-Rong Lai
Pages: 1082 - 1094

7. Learning Discriminative Subspaces on Random Contrasts for Image Saliency Analysis
Author(s): Shu Fang; Jia Li; Yonghong Tian; Tiejun Huang; Xiaowu Chen
Pages: 1095 - 1108

8. Coarse-to-Fine Learning for Single-Image Super-Resolution
Author(s): Kaibing Zhang; Dacheng Tao; Xinbo Gao; Xuelong Li; Jie Li
Pages: 1109 - 1122

9. Affinity and Penalty Jointly Constrained Spectral Clustering With All-Compatibility, Flexibility, and Robustness
Author(s): Pengjiang Qian; Yizhang Jiang; Shitong Wang; Kuan-Hao Su; Jun Wang; Lingzhi Hu; Raymond F. Muzic
Pages: 1123 - 1138

10. State Estimation for Discrete-Time Dynamical Networks With Time-Varying Delays and Stochastic Disturbances Under the Round-Robin Protocol
Author(s): Lei Zou; Zidong Wang; Huijun Gao; Xiaohui Liu
Pages: 1139 - 1151

11. Event-Triggered State Estimation for Discrete-Time Multidelayed Neural Networks With Stochastic Parameters and Incomplete Measurements
Author(s): Bo Shen; Zidong Wang; Hong Qiao
Pages: 1152 - 1163

12. On Deep Learning for Trust-Aware Recommendations in Social Networks
Author(s): Shuiguang Deng; Longtao Huang; Guandong Xu; Xindong Wu; Zhaohui Wu
Pages: 1164 - 1177

13. A Note on the Unification of Adaptive Online Learning
Author(s): Wenwu He; James Tin-Yau Kwok; Ji Zhu; Yang Liu
Pages: 1178 - 1191

14. LIF and Simplified SRM Neurons Encode Signals Into Spikes via a Form of Asynchronous Pulse Sigma–Delta Modulation
Author(s): Young C. Yoon
Pages: 1192 - 1205

15. A Collective Neurodynamic Approach to Constrained Global Optimization
Author(s): Zheng Yan; Jianchao Fan; Jun Wang
Pages: 1206 - 1215

16. Adaptive Neural Network Nonparametric Identifier With Normalized Learning Laws
Author(s): Isaac Chairez
Pages: 1216 - 1227

17. Speeding Up Cellular Neural Network Processing Ability by Embodying Memristors
Author(s): E. Bilotta; P. Pantano; S. Vena
Pages: 1228 - 1232

18. Mixtures of Conditional Random Fields for Improved Structured Output Prediction
Author(s): Minyoung Kim
Pages: 1233 - 1240

19. A Robust Regularization Path Algorithm for ν-Support Vector Classification
Author(s): Bin Gu; Victor S. Sheng
Pages: 1241 - 1248

Monday, May 1, 2017

Weekly Review 1 May 2017

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

  1. Not surprising that if you take the negative of an image, a deep ANN can't classify it. ANN aren't magic: http://www.kdnuggets.com/2017/04/negative-results-images-flaw-deep-learning.html
  2. Three interesting real-world applications of machine learning: http://www.informationweek.com/big-data/3-cool-ai-projects/a/d-id/1328666 
  3. At least they admit it is because of biased data-FaceApp apologises for making a racist selfie filter: https://techcrunch.com/2017/04/25/faceapp-apologises-for-building-a-racist-ai/ 
  4. What is a "whole brain approach" in ANN? https://www.datanami.com/2017/04/25/startup-patents-whole-brain-ai-approach/ 
  5. Probably best to make this technology openly available, might make it easier to develop ways of detecting it: https://techcrunch.com/2017/04/25/lyrebird-is-a-voice-mimic-for-the-fake-news-era/ 
  6. A cheat-sheet for Python deep learning libraries: http://www.datasciencecentral.com/profiles/blogs/deep-learning-cheat-sheet-using-python-libraries 
  7. PDF cheat sheet for Python deep learning libraries: https://s3.amazonaws.com/assets.datacamp.com/blog_assets/Keras_Cheat_Sheet_Python.pdf 
  8. On the need for a standard intermediate language for machine learning frameworks: http://www.kdnuggets.com/2017/04/deep-learning-virtual-machine-rule-all.html A role for @ieeecis?
  9. Machine learning is a cloud thing: https://www.theregister.co.uk/2017/04/27/ai_cloud_vendors_race/ 
  10. A crash-course in using machine learning in Python: http://www.kdnuggets.com/2017/05/guerrilla-guide-machine-learning-python.html 
  11. Some of the languages in which you can utilise machine learning: https://www.theregister.co.uk/2017/04/25/building_the_machine_languages_for_you/ 
  12. Building a recurrent ANN in TensorFlow: https://medium.com/@erikhallstrm/hello-world-rnn-83cd7105b767 
  13. Half of all jobs will be replaced by AI in ten years: http://www.cnbc.com/2017/04/27/kai-fu-lee-robots-will-replace-half-of-all-jobs.html

Soft Computing, Volume 21, Issue 10, May 2017

1. Preface: A volume dedicated to Wolfgang Rump on the occasion of his 65th birthday
Author(s): Yichuan Yang
Pages: 2465-2467

2. Generalized Łukasiewicz rings
Author(s): Albert Kadji, Celestin Lele, Jean B. Nganou
Pages: 2469-2476

3. Some results in r-disjunctive languages and related topics
Author(s): Di Zhang, Yuqi Guo, K. P. Shum
Pages: 2477-2483

4. The Cuntz semigroup and domain theory
Author(s): Klaus Keimel
Pages: 2485-2502

5. An application of subgroup lattices
Author(s): Yanping Chen, Yichuan Yang
Pages: 2503-2505

6. An extension of a Y. C. Yang theorem
Author(s): Dragoş Vaida
Pages: 2507-2512

7. Notes on quantum logics and involutive bounded posets
Author(s): Yali Wu, Yichuan Yang
Pages: 2513-2519

8. Quantum B-algebras: their omnipresence in algebraic logic and beyond
Author(s): Wolfgang Rump
Pages: 2521-2529

9. Filter topologies on MV-algebras
Author(s): Cuicui Luan, Yichuan Yang
Pages: 2531-2535

10. Weak QMV algebras and some ring-like structures
Author(s): Xian Lu, Yun Shang, Ru-qian Lu, Jian Zhang, Feifei Ma
Pages: 2537-2547

11. Note on classification of two-dimensional associative lattice-ordered real algebras
Author(s): Yichuan Yang, Xiaohong Zhang
Pages: 2549-2552

12. On soft weak structures
Author(s): A. H. Zakari, A. Ghareeb, Saleh Omran
Pages: 2553-2559

13. Quantale algebras as lattice-valued quantales
Author(s): Bin Zhao, Supeng Wu, Kaiyun Wang
Pages: 2561-2574

14. Catastrophe bond pricing for the two-factor Vasicek interest rate model with automatized fuzzy decision making
Author(s): Piotr Nowak, Maciej Romaniuk
Pages: 2575-2597

15. Dual trapdoor identity-based encryption with keyword search
Author(s): Jia’nan Liu, Junzuo Lai, Xinyi Huang
Pages: 2599-2607

16. Searching for the most significant rules: an evolutionary approach for subgroup discovery
Author(s): Victoria Pachón, Jacinto Mata, Juan Luis Domínguez
Pages: 2609-2618

17. Uncertain random spectra: a new metric for assessing the survivability of mobile wireless sensor networks
Author(s): Li Xu, Jing Zhang, Pei-Wei Tsai, Wei Wu, Da-Jin Wang
Pages: 2619-2629

18. FIR digital filter design using improved particle swarm optimization based on refraction principle
Author(s): Peng Shao, Zhijian Wu, Xuanyu Zhou, Dang Cong Tran
Pages: 2631-2642

19. Towards secure and cost-effective fuzzy access control in mobile cloud computing
Author(s): Wei Wu, Shun Hu, Xu Yang, Joseph K. Liu, Man Ho Au
Pages: 2643-2649

20. Restricted gene expression programming: a new approach for parameter identification inverse problems of partial differential equation
Author(s): Yan Chen, Kangshun Li, Zhangxing Chen, Jinfeng Wang
Pages: 2651-2663

Friday, April 28, 2017

IEEE Transactions on Emerging Topics in Computational Intelligence, Volume. 1, Issue 2, April 2017

1. Partitioning of Intelligent Buildings for Distributed Contaminant Detection and Isolation
Author(s): A. Kyriacou, S. Timotheou, M. P. Michaelides, C. Panayiotou and M. Polycarpou
Pages: 72-86

2. Automatic Microstructure Defect Detection of Ti-6Al-4V Titanium Alloy by Regions-Based Graph
Author(s): R. Ren, T. Hung and K. C. Tan
Pages: 87-96

3. Evolutionary Many-Objective Optimization of Hybrid Electric Vehicle Control: From General Optimization to Preference Articulation
Author(s): R. Cheng, T. Rodemann, M. Fischer, M. Olhofer and Y. Jin
Pages: 97-111

4. Routing Multiple Vehicles Cooperatively: Minimizing Road Network Breakdown Probability
Author(s): H. Guo, Z. Cao, M. Seshadri, J. Zhang, D. Niyato and U. Fastenrath
Pages: 112-124

5. On Location and Trace Privacy of the Moving Object Using the Negative Survey
Author(s): W. Luo, Y. Lu, D. Zhao and H. Jiang
Pages: 125-134

6. Parallelizing Under-Determined Inverse Problems for Network Applications
Author(s): M. Malboubi, J. Garrison, C.-N. Chuah and P. Sharma
Pages: 135-141

Wednesday, April 26, 2017

Review for 26 April 2017

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

  1. Couples don't need ML to tell them when they are about to fight they need help to reduce stresses that cause fights: http://spectrum.ieee.org/the-human-os/robotics/artificial-intelligence/algorithm-aims-to-predict-bickering-among-couples
  2. Facebook open sources it's preferred deep learning framework, Caffe2: https://techcrunch.com/2017/04/18/facebook-open-sources-caffe2-its-flexible-deep-learning-framework-of-choice/ 
  3. Five important machine learning projects: http://www.kdnuggets.com/2017/04/five-machine-learning-projects-cant-overlook-april.html 
  4. Cheap learning, not deep learning-simple algorithms are still useful for many problems: https://www.datanami.com/2017/04/17/cheap-learning-future/ 
  5. Neural networks predict heart attacks better than doctors: http://www.digitaltrends.com/health-fitness/ai-algorithm-heart-attack/ 
  6. "Automation is a great excuse for assholery", or, why biased data produces biased models: https://www.theguardian.com/commentisfree/2017/apr/20/robots-racist-sexist-people-machines-ai-language 
  7. MS has merged Python into SQL Server 2017 to give users access to machine learning frameworks on the server: https://techcrunch.com/2017/04/19/microsoft-wants-to-bring-data-and-machine-intelligence-closer-together/ 
  8. Why using AI in the court system is a bad idea: https://www.wired.com/2017/04/courts-using-ai-sentence-criminals-must-stop-now/
  9. Thoughts by neuroscientists on Elon Musk's Neural Lace: http://spectrum.ieee.org/the-human-os/biomedical/devices/5-neuroscience-experts-weigh-in-on-elon-musks-mysterious-neural-lace-company
  10. 95% of engineers graduating Indian institutions are unfit for software development jobs: http://www.gadgetsnow.com/jobs/95-engineers-in-india-unfit-for-software-development-jobs-claims-report/articleshow/58278224.cms
  11. Soft Computing, Volume 21, Number 9, May 2017 https://computational-intelligence.blogspot.com/2017/04/soft-computing-volume-21-number-9-may.html 
  12. How Facebook plans to make more money using machine learning: https://techcrunch.com/2017/04/21/machine-intelligence-is-the-future-of-monetization-for-facebook/ 
  13. AI investment is up-we are definitely in an AI hype-cycle: https://www.datanami.com/2017/04/19/ai-investments-surge/ 
  14. Introduction to transfer learning: http://sebastianruder.com/transfer-learning/index.html 
  15. Machine learning moves into recruitment: https://www.datanami.com/2017/04/14/ai-moves-deeper-hr/  Like there's no bias in *those* models..

Monday, April 24, 2017

Soft Computing, Volume 21, Number 9, May 2017

1. A unified view of consistent functions
Author(s): Ping Zhu, Huiyang Xie, Qiaoyan Wen
Pages: 2189-2199

2. On the category of rough sets
Author(s): R. A. Borzooei, A. A. Estaji, M. Mobini
Pages: 2201-2214

3. An adaptive memetic framework for multi-objective combinatorial optimization problems: studies on software next release and travelling salesman problems
Author(s): Xinye Cai, Xin Cheng, Zhun Fan, Erik Goodman, Lisong Wang
Pages: 2215-2236

4. A parallel algorithm for mining constrained frequent patterns using MapReduce
Author(s): Xiaowu Yan, Jifu Zhang, Yaling Xun, Xiao Qin
Pages: 2237-2249

5. A unified framework for the key weights in MAGDM under uncertainty
Author(s): Kaihong Guo, Wenli Li
Pages: 2251-2262

6. Remarks to “Fuzzy multicriteria decision making method based on the improved accuracy function for interval-valued intuitionistic fuzzy sets”
Author(s): Fangwei Zhang, Shihe Xu
Pages: 2263-2268

7. Classification with boosting of extreme learning machine over arbitrarily partitioned data
Author(s): Ferhat Özgür Çatak
Pages: 2269-2281

8. Nadir point estimation for many-objective optimization problems based on emphasized critical regions
Author(s): Handing Wang, Shan He, Xin Yao
Pages: 2283-2295

9. A solid transportation model with product blending and parameters as rough variables
Author(s): Pradip Kundu, Mouhya B. Kar, Samarjit Kar, Tandra Pal, Manoranjan Maiti
Pages: 2297-2306

10. Hybrid of binary gravitational search algorithm and mutual information for feature selection in intrusion detection systems
Author(s): Hamid Bostani, Mansour Sheikhan
Pages: 2307-2324

11. An interval type-2 fuzzy active contour model for auroral oval segmentation
Author(s): Jiao Shi, Jiaji Wu, Marco Anisetti, Ernesto Damiani, Gwanggil Jeon
Pages: 2325-2345

12. Marginal patch alignment for dimensionality reduction
Author(s): Jie Xu, Shengli Xie, Wenkang Zhu
Pages: 2347-2356

13. MSAFIS: an evolving fuzzy inference system
Author(s): José de Jesús Rubio, Abdelhamid Bouchachia
Pages: 2357-2366

14. A method of combining forward with backward greedy algorithms for sparse approximation to KMSE
Author(s): Yong-Ping Zhao, Dong Liang, Zheng Ji
Pages: 2367-2383

15. On randomization of neural networks as a form of post-learning strategy
Author(s): K. G. Kapanova, I. Dimov, J. M. Sellier
Pages: 2385-2393

16. A direct projection-based group decision-making methodology with crisp values and interval data
Author(s): Zhongliang Yue, Yuying Jia
Pages: 2395-2405

17. Ensemble of many-objective evolutionary algorithms for many-objective problems
Author(s): Yalan Zhou, Jiahai Wang, Jian Chen, Shangce Gao, Luyao Teng
Pages: 2407-2419

18. Trajectory planning for autonomous mobile robot using a hybrid improved QPSO algorithm
Author(s): Tao Xue, Renfu Li, Myongchol Tokgo, Junchol Ri, Gyanghyok Han
Pages: 2421-2437

19. An exact approach for the grocery delivery problem in urban areas
Author(s): F. Carrabs, R. Cerulli, A. Sciomachen
Pages: 2439-2450

20. Personalized cryptography in cognitive management
Author(s): Lidia Ogiela, Makoto Takizawa
Pages: 2451-2464

Tuesday, April 18, 2017

Review for 18 April 2017

Below are some of the interesting links I Tweeted about recently.
  1. Did an AI spam generator just get funded? https://techcrunch.com/2017/04/09/saleswhale-seed-funding/
  2. AI? Sounds more like a calendar! Maybe the dosage is set by an expert system: http://www.techrepublic.com/article/new-study-shows-how-ai-can-improve-recovery-in-stroke-patients/ 
  3. Distributing machine learning learning on smartphones: http://www.theverge.com/2017/4/10/15241492/google-ai-user-data-federated-learning Privacy win!
  4. Detecting cows with machine learning to make Indian roads safer: https://motherboard.vice.com/en_us/article/machine-learning-will-save-indias-cows-from-bad-drivers I've been to India, cows really are everywhere.
  5. AlphaGo is to take on multiple human opponents simultaneously: https://www.theguardian.com/technology/2017/apr/10/deepminds-alphago-to-take-on-five-human-players-at-once 
  6. Common mistakes in machine learning projects: https://www.datanami.com/2017/04/11/four-common-mistakes-machine-learning-projects/ #1 is similar to my bugbear: biased data sets!
  7. Google AutoDraw converts your doodles into proper drawings using machine learning: https://techcrunch.com/2017/04/11/googles-autodraw-uses-machine-learning-to-help-you-draw-like-a-pro/
  8. Using machine learning to detect anomalies in data streams: https://techcrunch.com/2017/04/12/sisense-pulse-uses-machine-learning-to-trigger-data-anomaly-alerts/
  9. Detecting fake news with a naive Bayesian classifier: http://www.kdnuggets.com/2017/04/machine-learning-fake-news-accuracy.html 
  10. A list of cheat-sheets for data science and machine learning: http://www.datasciencecentral.com/profiles/blogs/20-cheat-sheets-python-ml-data-science
  11. Fooling image recognition/classifier systems: http://www.theverge.com/2017/4/12/15271874/ai-adversarial-images-fooling-attacks-artificial-intelligence 
  12. A basic introduction to neural networks: https://techcrunch.com/2017/04/13/neural-networks-made-easy/ 
  13. Bias in data sets leads to bias in models, there is nothing surprising about that: https://www.theguardian.com/technology/2017/apr/13/ai-programs-exhibit-racist-and-sexist-biases-research-reveals 
  14. My citations have just topped 1000: https://scholar.google.com/citations?user=Z29KBKYAAAAJ

Tuesday, April 11, 2017

IEEE Transactions on Evolutionary Computation, Volume 21, Number 2, April 2017

1. Performance of Decomposition-Based Many-Objective Algorithms Strongly Depends on Pareto Front Shapes
Author(s): Hisao Ishibuchi; Yu Setoguchi; Hiroyuki Masuda; Yusuke Nojima
Pages: 169 - 190

2. Adaptive Multimodal Continuous Ant Colony Optimization
Author(s): Qiang Yang; Wei-Neng Chen; Zhengtao Yu; Tianlong Gu; Yun Li; Huaxiang Zhang; Jun Zhang
Pages: 191 - 205

3. Optimal Computing Budget Allocation for Particle Swarm Optimization in Stochastic Optimization
Author(s): Si Zhang; Jie Xu; Loo Hay Lee; Ek Peng Chew; Wai Peng Wong; Chun-Hung Chen
Pages: 206 - 219

4. Many-Objective Evolutionary Algorithms Based on Coordinated Selection Strategy
Author(s): Zhenan He; Gary G. Yen
Pages: 220 - 233

5. A Multiobjective Cooperative Coevolutionary Algorithm for Hyperspectral Sparse Unmixing
Author(s): Maoguo Gong; Hao Li; Enhu Luo; Jing Liu; Jia Liu
Pages: 234 - 248

6. Quantifying Variable Interactions in Continuous Optimization Problems
Author(s): Yuan Sun; Michael Kirley; Saman K. Halgamuge
Pages: 249 - 264

7. A Novel Image Representation Framework Based on Gaussian Model and Evolutionary Optimization
Author(s): Licheng Jiao; Sibo Zhang; Lingling Li; Shuyuan Yang; Fang Liu; Hongxia Hao; Hang Dong
Pages: 265 - 280

8. Factored Evolutionary Algorithms
Author(s): Shane Strasser; John Sheppard; Nathan Fortier; Rollie Goodman
Pages: 281 - 293

9. A Classification and Comparison of Credit Assignment Strategies in Multiobjective Adaptive Operator Selection
Author(s): Nozomi Hitomi; Daniel Selva
Pages: 294 - 314

10. Heterogeneous Cooperative Co-Evolution Memetic Differential Evolution Algorithm for Big Data Optimization Problems
Author(s): Nasser R. Sabar; Jemal Abawajy; John Yearwood
Pages: 315 - 327