- Schapire, Robert E.
- Cambridge, MA : MIT Press, ©2012.
- Description
- Book — 1 online resource (xv, 526 pages) : illustrations.
- Summary
-
- Foundations of machine learning
- Using AdaBoost to minimize training error
- Direct bounds on the generalization error
- The margins explanation for boosting's effectiveness
- Game theory, online learning, and boosting
- Loss minimization and generalizations of boosting
- Boosting, convex optimization, and information geometry
- Using confidence-rated weak predictions
- Multiclass classification problems
- Learning to rank
- Attaining the best possible accuracy
- Optimally efficient boosting
- Boosting in continuous time.
(source: Nielsen Book Data)
- Schapire, Robert E.
- Cambridge, MA : MIT Press, ©2012.
- Description
- Book — 1 online resource (xv, 526 pages) : illustrations.
- Summary
-
- Foundations of machine learning
- Using AdaBoost to minimize training error
- Direct bounds on the generalization error
- The margins explanation for boosting's effectiveness
- Game theory, online learning, and boosting
- Loss minimization and generalizations of boosting
- Boosting, convex optimization, and information geometry
- Using confidence-rated weak predictions
- Multiclass classification problems
- Learning to rank
- Attaining the best possible accuracy
- Optimally efficient boosting
- Boosting in continuous time.
(source: Nielsen Book Data)
43. Boosting : foundations and algorithms [2012]
- Schapire, Robert E.
- Cambridge, MA : MIT Press, ©2012.
- Description
- Book — 1 online resource (xv, 526 pages) : illustrations Digital: data file.
- Summary
-
- Foundations of machine learning
- Using AdaBoost to minimize training error
- Direct bounds on the generalization error
- The margins explanation for boosting's effectiveness
- Game theory, online learning, and boosting
- Loss minimization and generalizations of boosting
- Boosting, convex optimization, and information geometry
- Using confidence-rated weak predictions
- Multiclass classification problems
- Learning to rank
- Attaining the best possible accuracy
- Optimally efficient boosting
- Boosting in continuous time.
(source: Nielsen Book Data)
44. Boosting : foundations and algorithms [2012]
- Schapire, Robert E.
- Cambridge, MA : MIT Press, ©2012.
- Description
- Book — 1 online resource (xv, 526 pages) : illustrations Digital: data file.
- Summary
-
- Foundations of machine learning
- Using AdaBoost to minimize training error
- Direct bounds on the generalization error
- The margins explanation for boosting's effectiveness
- Game theory, online learning, and boosting
- Loss minimization and generalizations of boosting
- Boosting, convex optimization, and information geometry
- Using confidence-rated weak predictions
- Multiclass classification problems
- Learning to rank
- Attaining the best possible accuracy
- Optimally efficient boosting
- Boosting in continuous time.
(source: Nielsen Book Data)
- Hauppauge, N.Y. : Nova Science Publishers, ©2011.
- Description
- Book — 1 online resource (x, 274 pages) : illustrations
- Summary
-
- Preface
- Progressive Organization of Co-Operating Colonies/Collections of Ants/Agents (POOCA) for Competent Pheromone-Based Navigation & Multi-Agent Learning
- Ant Colony Solution to the Optimal Transformer Sizing & Efficiency Problem in Power Systems
- Distributed Decisions: New Insights from Radio-Tagged Ants
- Ant Colony Optimization used in No Wavefront Sensor Adaptive Optics Systems for Solid-State Lasers
- Any Colony Optimization Agents & Path Routing: The Cases of Construction Scheduling & Urban Water Distribution Pipe Networks
- KANTS: A Self-Organized Ant System for Pattern Clustering & Classification
- A Hybrid System Based in Ant Colony & Paraconsistent Logic
- Ant Colony Optimization: A Powerful Strategy for Biomarker Feature Selection
- Any Colony Optimization Based Message Authentication for Wireless Networks
- Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- International Workshop on Combinations of Intelligent Methods and Applications (2nd : 2010 : Arras, France)
- Berlin ; Heidelberg : Springer, ©2011.
- Description
- Book — 1 online resource (165 pages) : illustrations
- Summary
-
- Defeasible Planning through Multi-Agent Argumentation .-Operator behavior modelling in a submarine .-Automatic Wrapper Adaptation by Tree Edit Distance Matching
- Representing Temporal Knowledge in the Semantic Web: The Extended 4D Fluents Approach
- Combining a Multi-Document Update Summarization System -CBSEAS- with a Genetic Algorithm
- Extraction of Essential Events with Application to Damage Evaluation on Fuel Cells
- Detecting car accidents based on traffic flow measurements using machine learning techniques
- Next Generation Environments for Context-aware Learning Design
- Neurules-A Type of Neuro-Symbolic Rules: An Overview.
- New Jersey ; London : World Scientific, 2011.
- Description
- Book — 1 online resource (xii, 338 pages) : illustrations
- Summary
-
- Theoretical Foundations of Both SI and ANN
- Advances of SI and ANN
- Hybridization of SI and ANN
- Applications.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Príncipe, J. C. (José C.)
- New York ; London : Springer, ©2010.
- Description
- Book — 1 online resource (xxii, 515 pages) : illustrations Digital: text file.PDF.
- Summary
-
- Information Theory, Machine Learning, and Reproducing Kernel Hilbert Spaces.- Renyi's Entropy, Divergence and Their Nonparametric Estimators.- Adaptive Information Filtering with Error Entropy and Error Correntropy Criteria.- Algorithms for Entropy and Correntropy Adaptation with Applications to Linear Systems.- Nonlinear Adaptive Filtering with MEE, MCC, and Applications.- Classification with EEC, Divergence Measures, and Error Bounds.- Clustering with ITL Principles.- Self-Organizing ITL Principles for Unsupervised Learning.- A Reproducing Kernel Hilbert Space Framework for ITL.- Correntropy for Random Variables: Properties and Applications in Statistical Inference.- Correntropy for Random Processes: Properties and Applications in Signal Processing.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- London ; New York : Springer-Verlag, ©2010.
- Description
- Book — 1 online resource (xiii, 293 pages) : color illustrations Digital: text file.PDF.
- Summary
-
- 1. Programming-by-Demonstration of Robot Motions
- 2. Grasp Recognition by Fuzzy Modeling and Hidden Markov Models
- 3. Distributed Adaptive Coordinated Control of Multi-Manipulator Systems Using Neural Networks
- 4. A New Framework for View-invariant Human Action Recognition
- 5. Using Fuzzy Gaussian Inference and Genetic Programming to Classify 3D Human Motions
- 6. Obstacle Detection using Cross-ratio and Disparity Velocity
- 7. Learning and Vision-based Obstacle Avoidance and Navigation
- 8. A Fraction Distortion Model for Accurate Camera Calibration and Correction
- 9. A Leader-follower Flocking System Based on Estimated Flocking Center
- 10. A Behavior Based Control System for Surveillance
- 11. Hierarchical Composite Anti-Disturbance Control for Robotic Systems Using Robust Disturbance Observer
- 12. Autonomous Navigation for Mobile Robots with Human-Robot Interaction
- 13. Prediction-based Perceptual System of a Partner Robot for Natural Communication
- Index.
- Singapore ; River Edge, N.J. : World Scientific, ©1992.
- Description
- Book — 1 online resource (xxiv, 705 pages) : illustrations
- Summary
-
- An introduction to artificial intelligence, N.G. Bourbakis
- fundamental methods for horn logic and AI applications, E. Kounalis and P. Marquis
- applications of genetic algorithms to permutation problems, F. Petry and B. Buckles
- extracting procedural knowledge from software systems using inductive learning in the PM system, R. Reynolds and E. Zannoni
- resource oriented parallel planning, S. Lee and K. Chung
- advanced parsing technology for knowledge based shells, J. Kipps
- analysis and synthesis of intelligent systems, W. Arden
- document analysis and recognition, S.N. Srihari et al
- signal understanding - an AI approach to modulation and classification, J.E. Whelchel et al
- and others.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Rivera, Juan De Dios Santos.
- Berkeley, CA : APress, [2020]
- Description
- Book — 1 online resource
- Summary
-
- Chapter 1
- Welcome to TensorFlow.js Headings
- What is TensorFlow.js?
- TensorFlow.js API
- Tensors Operations Variables
- How to install it
- Use cases Chapter 2 Building your First Model Headings
- Building a logistic regression classification model
- Building a linear regression model
- Doing unsupervised learning with k-means
- Dimensionality reduction and visualization with t-SNE and d3.js
- Our first neural network Chapter 3 Create a drawing app to predict handwritten digits using Convolutional Neural Networks and MNIST Headings
- Convolutional Neural Networks
- The MNIST Dataset
- Design the model architecture
- Train the model
- Evaluate the model
- Build the drawing app
- Integrate the model within the app
- Chapter 4 "Move your body!" A game featuring PoseNet, a pose estimator model Headings
- What is PoseNet?
- Loading the model
- Interpreting the result
- Building a game around it Chapter 5 Detect yourself in real-time using an object detection model trained in Google Cloud's AutoML Headings
- TensorFlow Object Detection API
- Google Cloud's AutoML
- Training the model
- Exporting the model and importing it in TensorFlow.js
- Building the webcam app Chapter 6 Transfer Learning with Image Classifier and Voice Recognition Headings
- What's Transfer Learning?
- MobileNet and ImageNet (MobileNet is the base model and ImageNet is the training set)
- Transferring the knowledge
- Re-training the model
- Testing the model with a video Chapter 7 Censor food you do not like with pix2pix, Generative Adversarial Networks, and ml5.js Headings
- Introduction to Generative Adversarial Networks
- What is image translation?
- Training your custom image translator with pix2pix
- Deploying the model with ml5.js Chapter 8 Detect toxic words from a Chrome Extension using a Universal Sentence Encoder Headings
- Toxicity classifier
- Training the model
- Testing the model
- Integrating the model in a Chrome Extension Chapter 9 Time Series Analysis and Text Generation with Recurrent Neural Networks Headings
- Recurrent Neural Networks
- Example 1: Building an RNN for time series analysis
- Example 2: Building an RNN to generate text Chapter 10 Best practices, integrations with other platforms, remarks and final words Headings
- Best practices
- Integration with other platforms
- Materials for further practice
- Conclusion.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Madureira, Ana.
- Dordrecht : Springer, 2012.
- Description
- Book — 1 online resource (492 pages)
- Summary
-
- The Process of Industrial Bioethanol Production Explained by Self-Organised Maps / Miguel A. Sanz-Bobi, Pablo Ruiz and Julio Montes
- Towards a Further Understanding of the Robotic Darwinian PSO / Micael S. Couceiro, Fernando M.L. Martins, Filipe Clemente, Rui P. Rocha and Nuno M.F. Ferreira
- A Comparison Study Between Two Hyperspectral Clustering Methods: KFCM and PSO-FCM / Amin Alizadeh Naeini, Saeid Niazmardi, Shahin Rahmatollahi Namin, Farhad Samadzadegan and Saeid Homayouni
- Comparison of Classification Methods for Golf Putting Performance Analysis / J. Miguel A. Luz, Micael S. Couceiro, David Portugal, Rui P. Rocha and Hélder Araújo, et al.
- Switched Unfalsified Multicontroller Nonparametric Model Based Design / Fernando Coito, Luís Brito Palma and Fernando Costa
- Evolving Fuzzy Uncalibrated Visual Servoing for Mobile Robots / P.J.S. Gonçalves, P.J.F. Lopes, P.M.B. Torres and J.M.R. Sequeira.
- Evaluating the Potential of Particle Swarm Optimization for Hyperspectral Image Clustering in Minimum Noise Fraction Feature Space / Shahin Rahmatollahi Namin, Amin Alizadeh Naeini and Farhad Samadzadegan
- On a Ball's Trajectory Model for Putting's Evaluation / Gonçalo Dias, Rui Mendes, Micael S. Couceiro, Carlos M. Figueiredo and J. Miguel A. Luz
- Efficient Discriminative Models for Proteomics with Simple and Optimized Features / Lionel Morgado, Carlos Pereira, Paula Veríssimo and António Dourado
- Meta-heuristics Self-Parameterization in a Multi-agent Scheduling System Using Case-Based Reasoning / Ivo Pereira, Ana Madureira and Paulo de Moura Oliveira
- Haptic-Based Robot Teleoperation: Interacting with Real Environments / Pedro Neto, Nélio Mourato and J. Norberto Pires
- Multi-agent Predictive Control with Application in Intelligent Infrastructures / J.M. Igreja, S.J. Costa, J.M. Lemos and F.M. Cadete
- Single-Objective Spreading Algorithm / E.J. Solteiro Pires, Luís Mendes, António M. Lopes, P.B. de Moura Oliveira and J.A. Tenreiro Machado.
- Fault Tolerant Control Based on Adaptive LQG and Fuzzy Controllers / Carla Viveiros, Luis Brito Palma and José Manuel Igreja
- P2P Web Service Based System for Supporting Decision-Making in Cellular Manufacturing Scheduling / Maria Leonilde R. Varela, Rui Barbosa and Susana Costa
- Web-Based Decision Support System for Orders Planning / António Arrais-Castro, Maria Leonilde R. Varela and Sílvio Carmo-Silva
- Product Documentation Management Through REST-Based Web Service / Filipe Rocha, Maria Leonilde R. Varela and Sílvio Carmo-Silva
- Fuzzy Web Platform for Electrical Energy Losses Management / Gaspar Gonçalves Vieira, Maria Leonilde R. Varela and Rita A. Ribeiro
- Web System for Supporting Project Management / Cátia Filipa Veiga Alves, André Filipe Nogueira da Silva and Maria Leonilde R. Varela
- Generation Capacity Expansion Planning in Restructured Electricity Markets Using Genetic Algorithms / Adelino J.C. Pereira and João Tomé Saraiva.
- Decision Making in Maintainability of High Risk Industrial Equipment / José Sobral and Luis Ferreira
- The Classification Platform Applied to Mammographic Images / P.J.S. Gonçalves
- On an Optimization Model for Approximate Nonnegative Matrix Factorization / Ana Maria de Almeida
- Random Walks in Electric Networks / D.M.L.D. Rasteiro
- Business Intelligence Tools / Jorge Bernardino and Marco Tereso
- Food Service Management Web Platform Based on XML Specification and Web Services / Pedro Sabioni, Vinícius Carneiro and Maria Leonilde R. Varela
- Differential Evolution on the Minimization of Thermal Residual Stresses in Functionally Graded Structures / T.A.N. Silva and M.A.R. Loja
- Magnetic Wheeled Climbing Robot: Design and Implementation / M.F. Silva, R.S. Barbosa and A.L.C. Oliveira
- Development of an AGV Controlled by Fuzzy Logic / Ramiro S. Barbosa, Manuel F. Silva and Dário J. Osório
- Affect Recognition / Raquel Faria and Ana Almeida
- Web 2.0: Tagging Usefulness / Joaquim Filipe P. Santos and Ana Almeida.
- Multidimensional Scaling Analysis of Electricity Market Prices / Filipe Azevedo and J. Tenreiro Machado
- PCMAT Metadata Authoring Tool / Paulo Couto, Constantino Martins, Luiz Faria, Marta Fernandes and Eurico Carrapatoso
- Collaborative Broker for Distributed Energy Resources / João Carlos Ferreira, Alberto Rodrigues da Silva, Vítor Monteiro and João L. Afonso
- A Multidimensional Scaling Classification of Robotic Sensors / Miguel F.M. Lima and J.A. Tenreiro Machado
- Rough Set Theory: Data Mining Technique Applied to the Electrical Power System / C.I. Faustino Agreira, C.M. Machado Ferreira and F.P. Maciel Barbosa
- Tuning a Fractional Order Controller from a Heat Diffusion System Using a PSO Algorithm / Isabel S. Jesus and Ramiro S. Barbosa
- A Tool for Biomedical -- Documents Classification Using Support Vector Machines / João Oliveira, Daniel Correia, Carlos Pereira, Paula Veríssimo and António Dourado.
- Conflicts Management in Retail Systems with Self-Regulation / Bruno Magalhães and Ana Madureira
- Adaptive e-Learning Systems Foundational Issues of the ADAPT Project / Eduardo Pratas and Viriato M. Marques
- Recognizing Music Styles -- An Approach Based on the Zipf-Mandelbrot Law / Viriato M. Marques and Cecília Reis
- A Platform for Peptidase Detection Based on Text Mining Techniques and Support Vector Machines / Daniel Correia, Carlos Pereira, Paula Veríssimo and António Dourado
- Optimal Configuration of Uniplanar-Unilateral External Fixators in Tibia Fractures / Luis Roseiro and Augusta Neto
- Identification of the Forces in the Suspension System of a Race Car Using Artificial Neural Networks / Luis Roseiro, Carlos Alcobia, Pedro Ferreira, Abderrahmane Baïri and Najib Laraqi, et al.
- Combinational Logic Circuits Design Tool for a Learning Management System / Cecília Reis and Viriato M. Marques
- Labeling Methods for the General Case of the Multi-objective Shortest Path Problem -- A Computational Study / J.M. Paixão and J.L. Santos.
(source: Nielsen Book Data)
- Alpaydin, Ethem.
- 2nd ed. - Cambridge, Mass. : MIT Press, ©2010.
- Description
- Book — 1 online resource (xl, 537 pages) : illustrations.
- Summary
-
The goal of machine learning is to program computers to use example data or past experience to solve a given problem. Many successful applications of machine learning exist already, including systems that analyze past sales data to predict customer behavior, optimize robot behavior so that a task can be completed using minimum resources, and extract knowledge from bioinformatics data. The second edition of Introduction to Machine Learning is a comprehensive textbook on the subject, covering a broad array of topics not usually included in introductory machine learning texts. In order to present a unified treatment of machine learning problems and solutions, it discusses many methods from different fields, including statistics, pattern recognition, neural networks, artificial intelligence, signal processing, control, and data mining. All learning algorithms are explained so that the student can easily move from the equations in the book to a computer program. The text covers such topics as supervised learning, Bayesian decision theory, parametric methods, multivariate methods, multilayer perceptrons, local models, hidden Markov models, assessing and comparing classification algorithms, and reinforcement learning. New to the second edition are chapters on kernel machines, graphical models, and Bayesian estimation; expanded coverage of statistical tests in a chapter on design and analysis of machine learning experiments; case studies available on the Web (with downloadable results for instructors); and many additional exercises. All chapters have been revised and updated. Introduction to Machine Learning can be used by advanced undergraduates and graduate students who have completed courses in computer programming, probability, calculus, and linear algebra. It will also be of interest to engineers in the field who are concerned with the application of machine learning methods.
(source: Nielsen Book Data)
- Alpaydin, Ethem.
- 2nd ed. - Cambridge, Mass. : MIT Press, c2010.
- Description
- Book — 1 online resource (xl, 537 p.) : ill.
- Summary
-
The goal of machine learning is to program computers to use example data or past experience to solve a given problem. Many successful applications of machine learning exist already, including systems that analyze past sales data to predict customer behavior, optimize robot behavior so that a task can be completed using minimum resources, and extract knowledge from bioinformatics data. The second edition of Introduction to Machine Learning is a comprehensive textbook on the subject, covering a broad array of topics not usually included in introductory machine learning texts. In order to present a unified treatment of machine learning problems and solutions, it discusses many methods from different fields, including statistics, pattern recognition, neural networks, artificial intelligence, signal processing, control, and data mining. All learning algorithms are explained so that the student can easily move from the equations in the book to a computer program. The text covers such topics as supervised learning, Bayesian decision theory, parametric methods, multivariate methods, multilayer perceptrons, local models, hidden Markov models, assessing and comparing classification algorithms, and reinforcement learning. New to the second edition are chapters on kernel machines, graphical models, and Bayesian estimation; expanded coverage of statistical tests in a chapter on design and analysis of machine learning experiments; case studies available on the Web (with downloadable results for instructors); and many additional exercises. All chapters have been revised and updated. Introduction to Machine Learning can be used by advanced undergraduates and graduate students who have completed courses in computer programming, probability, calculus, and linear algebra. It will also be of interest to engineers in the field who are concerned with the application of machine learning methods.
(source: Nielsen Book Data)
55. Support vector machines [2008]
- Steinwart, Ingo.
- 1st ed. - New York : Springer, ©2008.
- Description
- Book — 1 online resource (xvi, 601 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Preface.- Introduction.- Loss functions and their risks.- Surrogate loss functions.- Kernels and reproducing kernel Hilbert spaces.- Infinite samples versions of support vector machines.- Basic statistical analysis of SVMs.- Advanced statistical analysis of SVMs.- Support vector machines for classification.- Support vector machines for regression.- Robustness.- Computational aspects.- Data mining.- Appendix.- Notation and symbols.- Abbreviations.- Author index.- Subject index.- References.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
56. Swarm intelligent systems [2006]
- Berlin : Springer-Verlag, ©2006.
- Description
- Book — 1 online resource (xx, 184 pages) : illustrations Digital: text file.PDF.
- Summary
-
- Methodologies Based on Particle Swarm Intelligence.- Swarm Intelligence: Foundations, Perspectives and Applications.- Waves of Swarm Particles (WoSP).- Grammatical Swarm: A Variable-Length Particle Swarm Algorithm.- SWARMs of Self-Organizing Polymorphic Agents.- Experiences Using Particle Swarm Intelligence.- Swarm Intelligence - Searchers, Cleaners and Hunters.- Ant Colony Optimisation for Fast Modular Exponentiation using the Sliding Window Method.- Particle Swarm for Fuzzy Models Identification.- A Matlab Implementation of Swarm Intelligence based Methodology for Identification of Optimized Fuzzy Models.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Berlin ; Heidelberg : Springer-Verlag, ©2011.
- Description
- Book — 1 online resource (xi, 542 pages) Digital: text file.PDF.
- Summary
-
- Part A: Particle Swarm Optimization. From Theory to Practice in Particle Swarm Optimization / Maurice Clerc
- What Makes Particle Swarm Optimization a Very Interesting and Powerful Algorithm? / J.L. Fernández-Martínez, E. García-Gonzalo
- Developing Niching Algorithms in Particle Swarm Optimization / Xiaodong Li
- Test Function Generators for Assessing the Performance of PSO Algorithms in Multimodal Optimization / Julio Barrera, Carlos A. Coello Coello
- Linkage Sensitive Particle Swarm Optimization / Deepak Devicharan, Chilukuri K. Mohan
- Parallel Particle Swarm Optimization Algorithm Based on Graphic Processing Units / Ying Tan, You Zhou
- Velocity Adaptation in Particle Swarm Optimization / Sabine Helwig, Frank Neumann, Rolf Wanka
- Integral-Controlled Particle Swarm Optimization / Zhihua Cui, Xingjuan Cai, Ying Tan, Jianchao Zeng
- Particle Swarm Optimization for Markerless Full Body Motion Capture / Zheng Zhang, Hock Soon Seah, Chee Kwang Quah
- An Adaptive Multi-Objective Particle Swarm Optimization Algorithm with Constraint Handling / Praveen Kumar Tripathi, Sanghamitra Bandyopadhyay, Sankar Kumar Pal
- Multiobjective Particle Swarm Optimization for Optimal Power Flow Problem / M.A. Abido
- A Multi-objective Resource Assignment Problem in Product Driven Supply Chain Using Quantum Inspired Particle Swarm Algorithm / Sri Krishna Kumar, S.G. Ponnambalam, M.K. Tiwari
- Part B: Bee Colony Optimization. Honeybee Optimisation -- An Overview and a New Bee Inspired Optimisation Scheme / Konrad Diwold, Madeleine Beekman, Martin Middendorf
- Parallel Approaches for the Artificial Bee Colony Algorithm / Rafael Stubs Parpinelli, César Manuel Vargas Benitez, Heitor Silvério Lopes
- Bumble Bees Mating Optimization Algorithm for the Vehicle Routing Problem / Yannis Marinakis, Magdalene Marinaki
- Part C: Ant Colony Optimization. Ant Colony Optimization: Principle, Convergence and Application / Haibin Duan
- Optimization of Fuzzy Logic Controllers for Robotic Autonomous Systems with PSO and ACO / Oscar Castillo, Patricia Melin, Fevrier Valdez, Ricardo Martínez-Marroquín
- Part D: Other Swarm Techniques. A New Framework for Optimization Based-On Hybrid Swarm Intelligence / Pei-Wei Tsai, Jeng-Shyang Pan, Peng Shi, Bin-Yih Liao
- Glowworm Swarm Optimization for Multimodal Search Spaces / K.N. Krishnanand, D. Ghose
- Direct and Inverse Modeling of Plants Using Cat Swarm Optimization / Ganapati Panda, Pyari Mohan Pradhan, Babita Majhi
- Reliability-Redundancy Optimization Using a Chaotic Differential Harmony Search Algorithm / Leandro dos Santos Coelho, Diego L. de A. Bernert, Viviana Cocco Mariani
- Gene Regulatory Network Identification from Gene Expression Time Series Data Using Swarm Intelligence / Debasish Datta, Amit Konar, Swagatam Das, B.K. Panigrahi.
- Wang, Pei, 1958-
- Dordrecht : Springer, ©2006.
- Description
- Book — 1 online resource (xviii, 412 pages) : some illustrations Digital: text file.PDF.
- Summary
-
- Preface Acknowledgment PART I. Theoretical Foundation
- Chapter 1. The Goal of Artificial Intelligence 1.1 To define intelligence 1.2 Various schools in AI research 1.3 AI as a whole
- Chapter 2. A New Approach Toward AI 2.1 To define AI 2.2 Intelligent reasoning systems 2.3 Major design issues of NARS PART II. Non-Axiomatic Reasoning System
- Chapter 3. The Core Logic 3.1 NAL-0: binary inheritance 3.2 The language of NAL-1 3.3 The inference rules of NAL-1
- Chapter 4. First-Order Inference 4.1 Compound terms 4.2 NAL-2: sets and variants of inheritance 4.3 NAL-3: intersections and differences 4.4 NAL-4: products, images, and ordinary relations
- Chapter 5. Higher-Order Inference 5.1 NAL-5: statements as terms 5.2 NAL-6: statements with variables 5.3 NAL-7: temporal statements 5.4 NAL-8: procedural statements
- Chapter 6. Inference Control 6.1 Task management 6.2 Memory structure 6.3 Inference processes 6.4 Budget assessment . PART III. Comparison and Discussion
- Chapter 7. Semantics 7.1 Experience vs. model 7.2 Extension and intension 7.3 Meaning of term 7.4 Truth of statement
- Chapter 8. Uncertainty 8.1 The non-numerical approaches 8.2 The fuzzy approach 8.3 The Bayesian approach 8.4 Other probabilistic approaches 8.5 Unified representation of uncertainty
- Chapter 9. Inference Rules 9.1 Deduction 9.2 Induction 9.3 Abduction 9.4 Implication
- Chapter 10. NAL as a Logic 10.1 NAL as a term logic 10.2 NAL vs. predicate logic 10.3 Logic and AI
- Chapter 11. Categorization and Learning 11.1 Concept and categorization 11.2 Learning in NARS
- Chapter 12. Control and Computation 12.1 NARS and theoretical computer science 12.2 Various assumptions about resources 12.3 Dynamic natures of NARS PART IV. Conclusions
- Chapter 13. Current Results 13.1 Theoretical foundation 13.2 Formal model 13.3 Computer implementation
- Chapter 14. NARS in the Future 14.1 Next steps of the project 14.2 What NARS is not 14.3 General implications Bibliography Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- CIMA 2012 (2012 : Montpellier, France)
- Berlin ; New York : Springer, ©2013.
- Description
- Book — 1 online resource Digital: text file.PDF.
- Summary
-
- Intelligent Agents: Integrating Multiple Components Through a Symbolic Structure / Razvan Dinu, Tiberiu Stratulat
- An Architecture for Multi-Dimensional Temporal Abstraction Supporting Decision Making in Oil-Well Drilling / Odd Erik Gundersen, Frode Sørmo
- A New Impulse Noise Filtering Algorithm Based on a Neuro-Fuzzy Network / Yueyang Li, Haichi Luo, Jun Sun
- A Fuzzy System for Educational Tasks for Children with Reading and Writing Disabilities / Adalberto Bosco C. Pereira
- Optimizing the Performance of a Refrigeration System Using an Invasive Weed Optimization Algorithm / Roozbeh Razavi-Far, Vasile Palade, Jun Sun
- A New Cooperative Evolutionary Multi-Swarm Optimizer Algorithm Based on CUDA Architecture Applied to Engineering Optimization / Daniel Leal Souza, Otávio Noura Teixeira
- Hybrid Approach of Genetic Programming and Quantum-Behaved Particle Swarm Optimization for Modeling and Optimization of Fermentation Processes / Jun Sun, Vasile Palade, Zhenyu Wang
- Hybrid Client Specific Discriminant Analysis and its Application to Face Verification / Xiao-Qi Sun, Xiao-Jun Wu, Jun Sun.
- Catalonian Conference on AI (15th : 2012 : Universitat d'Alacant)
- Amsterdam ; Washington, D.C. : IOS Press, ©2012.
- Description
- Book — 1 online resource
- Summary
-
- Title Page; Preface; Conference Organization; Contents; Invited Talks; Some Real-World Applications of Soft Artificial Intelligence: Scientogram Mining, Assembly Line Balancing, and Forensic Identification; Challenges of Automation and Safety in Field Robotics; KDD, DM and Machine Learning; Data Mining and Query Answer Techniques Applied to a Bio-Nutritional Trials Focused Expert System; The Use of the Traffic Lights Panel as a Goodness-of-Clustering Indicator: An Application to Financial Assets
- Using Gabriel Graphs in Borderline-SMOTE to Deal with Severe Two-Class Imbalance Problems on Neural NetworksActive Learning of Actions Based on Support Vector Machines; Towards the Formalization of Re-Identification for Some Data Masking Methods; Natural Language Processing and Recommenders; Towards Object Descriptions in Natural Language from Qualitative Models; Semantically-Enhanced Recommenders; Computer Vision; Supervised Texture Classification Using Optimization Techniques; Modelling Facial Expressions Dynamics with Gaussian Process Regression; Survey on 2D and 3D Human Pose Recovery
- A Study of Registration Techniques for 6DoF SLAMRobotics; Object Detection Methods for Robot Grasping: Experimental Assessment and Tuning; The Role of i-Walker in Post-Stroke Training; Using a RGB-D Camera for 6DoF SLAM; Learning Topological SLAM Using Visual Information; AI for Optimization Problems; Exploring Genetic Algorithms and Simulated Annealing for Immobile Location-Allocation Problem; Analysis and Generation of Pseudo-Industrial MaxSAT Instances; A SAT-Based Approach to MinSAT; Multicast Session Protection Planner
- Tool to Plan and Deploy Protection Infrastructure: A SPEA Approach
- AI Applications to Real WorldA Case-Based Hybrid System for Injection Molding Sensorization; First Studies on Self-Preserving Digital Objects; Intelligent Building Energy Management Through Holistic Knowledge Based Approach; Quantitative and Qualitative Approaches for Stock Movement Prediction; Subject Index; Author Index
Articles+
Journal articles, e-books, & other e-resources
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