000 | 08842nam a2201057 i 4500 | ||
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001 | 6266787 | ||
003 | IEEE | ||
005 | 20200421114418.0 | ||
006 | m o d | ||
007 | cr |n||||||||| | ||
008 | 151221s2012 nju ob 001 eng d | ||
020 |
_a9781118266502 _qebook |
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020 | _a047091999X | ||
020 |
_z9780470919996 _qprint |
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020 |
_z1118266501 _qelectronic |
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020 |
_z9781118271537 _qelectronic |
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020 |
_z111827153X _qelectronic |
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024 | 7 |
_a10.1002/9781118266502 _2doi |
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035 | _a(CaBNVSL)mat06266787 | ||
035 | _a(IDAMS)0b000064818b36d1 | ||
040 |
_aCaBNVSL _beng _erda _cCaBNVSL _dCaBNVSL |
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050 | 4 |
_aQ325.6 _b.K85 2012eb |
|
082 | 0 | 4 | _a006.3/1 |
100 | 1 |
_aKulkarni, Parag, _eauthor. |
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245 | 1 | 0 |
_aReinforcement and systemic machine learning for decision making / _cParag Kulkarni. |
264 | 1 |
_aHoboken [New Jersey] : _bJohn Wiley & Sons, _cc2012. |
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264 | 2 |
_a[Piscataqay, New Jersey] : _bIEEE Xplore, _c[2012] |
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300 | _a1 PDF (422 pages). | ||
336 |
_atext _2rdacontent |
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337 |
_aelectronic _2isbdmedia |
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338 |
_aonline resource _2rdacarrier |
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490 | 1 |
_aIEEE Press Series on Systems Science and Engineering ; _vv.1 |
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500 | _aIn Wiley online library | ||
505 | 0 | _aPreface xv -- Acknowledgments xix -- About the Author xxi -- 1 Introduction to Reinforcement and Systemic Machine Learning 1 -- 1.1. Introduction 1 -- 1.2. Supervised, Unsupervised, and Semisupervised Machine Learning 2 -- 1.3. Traditional Learning Methods and History of Machine Learning 4 -- 1.4. What Is Machine Learning? 7 -- 1.5. Machine-Learning Problem 8 -- 1.6. Learning Paradigms 9 -- 1.7. Machine-Learning Techniques and Paradigms 12 -- 1.8. What Is Reinforcement Learning? 14 -- 1.9. Reinforcement Function and Environment Function 16 -- 1.10. Need of Reinforcement Learning 17 -- 1.11. Reinforcement Learning and Machine Intelligence 17 -- 1.12. What Is Systemic Learning? 18 -- 1.13. What Is Systemic Machine Learning? 18 -- 1.14. Challenges in Systemic Machine Learning 19 -- 1.15. Reinforcement Machine Learning and Systemic Machine Learning 19 -- 1.16. Case Study Problem Detection in a Vehicle 20 -- 1.17. Summary 20 -- 2 Fundamentals of Whole-System, Systemic, and Multiperspective Machine Learning 23 -- 2.1. Introduction 23 -- 2.2. What Is Systemic Machine Learning? 27 -- 2.3. Generalized Systemic Machine-Learning Framework 30 -- 2.4. Multiperspective Decision Making and Multiperspective Learning 33 -- 2.5. Dynamic and Interactive Decision Making 43 -- 2.6. The Systemic Learning Framework 47 -- 2.7. System Analysis 52 -- 2.8. Case Study: Need of Systemic Learning in the Hospitality Industry 54 -- 2.9. Summary 55 -- 3 Reinforcement Learning 57 -- 3.1. Introduction 57 -- 3.2. Learning Agents 60 -- 3.3. Returns and Reward Calculations 62 -- 3.4. Reinforcement Learning and Adaptive Control 63 -- 3.5. Dynamic Systems 66 -- 3.6. Reinforcement Learning and Control 68 -- 3.7. Markov Property and Markov Decision Process 68 -- 3.8. Value Functions 69 -- 3.8.1. Action and Value 70 -- 3.9. Learning an Optimal Policy (Model-Based and Model-Free Methods) 70 -- 3.10. Dynamic Programming 71 -- 3.11. Adaptive Dynamic Programming 71 -- 3.12. Example: Reinforcement Learning for Boxing Trainer 75. | |
505 | 8 | _a3.13. Summary 75 -- 4 Systemic Machine Learning and Model 77 -- 4.1. Introduction 77 -- 4.2. A Framework for Systemic Learning 78 -- 4.3. Capturing the Systemic View 86 -- 4.4. Mathematical Representation of System Interactions 89 -- 4.5. Impact Function 91 -- 4.6. Decision-Impact Analysis 91 -- 4.7. Summary 97 -- 5 Inference and Information Integration 99 -- 5.1. Introduction 99 -- 5.2. Inference Mechanisms and Need 101 -- 5.3. Integration of Context and Inference 107 -- 5.4. Statistical Inference and Induction 111 -- 5.5. Pure Likelihood Approach 112 -- 5.6. Bayesian Paradigm and Inference 113 -- 5.7. Time-Based Inference 114 -- 5.8. Inference to Build a System View 114 -- 5.9. Summary 118 -- 6 Adaptive Learning 119 -- 6.1. Introduction 119 -- 6.2. Adaptive Learning and Adaptive Systems 119 -- 6.3. What Is Adaptive Machine Learning? 123 -- 6.4. Adaptation and Learning Method Selection Based on Scenario 124 -- 6.5. Systemic Learning and Adaptive Learning 127 -- 6.6. Competitive Learning and Adaptive Learning 140 -- 6.7. Examples 146 -- 6.8. Summary 149 -- 7 Multiperspective and Whole-System Learning 151 -- 7.1. Introduction 151 -- 7.2. Multiperspective Context Building 152 -- 7.3. Multiperspective Decision Making and Multiperspective Learning 154 -- 7.4. Whole-System Learning and Multiperspective Approaches 164 -- 7.5. Case Study Based on Multiperspective Approach 167 -- 7.6. Limitations to a Multiperspective Approach 174 -- 7.7. Summary 174 -- 8 Incremental Learning and Knowledge Representation 177 -- 8.1. Introduction 177 -- 8.2. Why Incremental Learning? 178 -- 8.3. Learning from What Is Already Learned. . . 180 -- 8.4. Supervised Incremental Learning 191 -- 8.5. Incremental Unsupervised Learning and Incremental Clustering 191 -- 8.6. Semisupervised Incremental Learning 196 -- 8.7. Incremental and Systemic Learning 199 -- 8.8. Incremental Closeness Value and Learning Method 200 -- 8.9. Learning and Decision-Making Model 205 -- 8.10. Incremental Classification Techniques 206. | |
505 | 8 | _a8.11. Case Study: Incremental Document Classification 207 -- 8.12. Summary 208 -- 9 Knowledge Augmentation: A Machine Learning Perspective 209 -- 9.1. Introduction 209 -- 9.2. Brief History and Related Work 211 -- 9.3. Knowledge Augmentation and Knowledge Elicitation 215 -- 9.4. Life Cycle of Knowledge 217 -- 9.5. Incremental Knowledge Representation 222 -- 9.6. Case-Based Learning and Learning with Reference to Knowledge Loss 224 -- 9.7. Knowledge Augmentation: Techniques and Methods 224 -- 9.8. Heuristic Learning 228 -- 9.9. Systemic Machine Learning and Knowledge Augmentation 229 -- 9.10. Knowledge Augmentation in Complex Learning Scenarios 232 -- 9.11. Case Studies 232 -- 9.12. Summary 235 -- 10 Building a Learning System 237 -- 10.1. Introduction 237 -- 10.2. Systemic Learning System 237 -- 10.3. Algorithm Selection 242 -- 10.4. Knowledge Representation 244 -- 10.5. Designing a Learning System 245 -- 10.6. Making System to Behave Intelligently 246 -- 10.7. Example-Based Learning 246 -- 10.8. Holistic Knowledge Framework and Use of Reinforcement Learning 246 -- 10.9. Intelligent Agents-Deployment and Knowledge Acquisition and Reuse 250 -- 10.10. Case-Based Learning: Human Emotion-Detection System 251 -- 10.11. Holistic View in Complex Decision Problem 253 -- 10.12. Knowledge Representation and Data Discovery 255 -- 10.13. Components 258 -- 10.14. Future of Learning Systems and Intelligent Systems 259 -- 10.15. Summary 259 -- Appendix A: Statistical Learning Methods 261 -- Appendix B: Markov Processes 271 -- Index 281. | |
506 | 1 | _aRestricted to subscribers or individual electronic text purchasers. | |
530 | _aAlso available in print. | ||
538 | _aMode of access: World Wide Web | ||
588 | _aDescription based on PDF viewed 12/21/2015. | ||
650 | 0 | _aReinforcement learning. | |
650 | 0 | _aMachine learning. | |
650 | 0 | _aDecision Making. | |
655 | 0 | _aElectronic books. | |
695 | _aAbstracts | ||
695 | _aActuators | ||
695 | _aAdaptation models | ||
695 | _aAdaptive systems | ||
695 | _aBayesian methods | ||
695 | _aBuildings | ||
695 | _aContext | ||
695 | _aContext modeling | ||
695 | _aDecision making | ||
695 | _aEquations | ||
695 | _aHeuristic algorithms | ||
695 | _aHumans | ||
695 | _aIndexes | ||
695 | _aInference mechanisms | ||
695 | _aIntegrated circuits | ||
695 | _aIntelligent agents | ||
695 | _aIntelligent systems | ||
695 | _aKnowledge acquisition | ||
695 | _aKnowledge based systems | ||
695 | _aKnowledge representation | ||
695 | _aLearning | ||
695 | _aLearning systems | ||
695 | _aMachine learning | ||
695 | _aMachine learning algorithms | ||
695 | _aMagnetic heads | ||
695 | _aMarkov processes | ||
695 | _aMathematical model | ||
695 | _aNeural networks | ||
695 | _aProbabilistic logic | ||
695 | _aRoads | ||
695 | _aSensors | ||
695 | _aStandards | ||
695 | _aStatistical learning | ||
695 | _aSteady-state | ||
695 | _aSupervised learning | ||
695 | _aSwitches | ||
695 | _aTraining | ||
695 | _aTraining data | ||
695 | _aUnsupervised learning | ||
695 | _aVectors | ||
710 | 2 |
_aIEEE Xplore (Online Service), _edistributor. |
|
710 | 2 |
_aJohn Wiley & Sons, _epublisher. |
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776 | 0 | 8 |
_iPrint version: _z9780470919996 |
830 | 0 |
_aIEEE Press Series on Systems Science and Engineering ; _vv.1 |
|
856 | 4 | 2 |
_3Abstract with links to resource _uhttp://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=6266787 |
942 | _cEBK | ||
999 |
_c59841 _d59841 |