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Reinforcement and systemic machine l...
~
Kulkarni, Parag.
Reinforcement and systemic machine learning for decision making
Record Type:
Electronic resources : Monograph/item
Title/Author:
Reinforcement and systemic machine learning for decision makingParag Kulkarni.
Author:
Kulkarni, Parag.
Published:
Hoboken :John Wiley & Sons,2012.
Description:
1 online resource (422 p.)
Subject:
Reinforcement learning.
Online resource:
http://onlinelibrary.wiley.com/book/10.1002/9781118266502
ISBN:
9781118266502 (electronic bk.)
Reinforcement and systemic machine learning for decision making
Kulkarni, Parag.
Reinforcement and systemic machine learning for decision making
[electronic resource] /Parag Kulkarni. - Hoboken :John Wiley & Sons,2012. - 1 online resource (422 p.) - IEEE Press Series on Systems Science and Engineering ;v.1. - IEEE Press series on systems science and engineering..
Introduction to Reinforcement and Systemic Machine Learning --ch. 1:
Reinforcement and Systemic Machine Learning for Decision MakingThere are always difficulties in making machines that learn from experience. Complete information is not always available--or it becomes available in bits and pieces over a period of time. With respect to systemic learning, there is a need to understand the impact of decisions and actions on a system over that period of time. This book takes a holistic approach to addressing that need and presents a new paradigm--creating new learning applications and, ultimately, more intelligent machines.The first book of its kind in this new and g.
ISBN: 9781118266502 (electronic bk.)
Standard No.: 9786613807076Subjects--Topical Terms:
349131
Reinforcement learning.
LC Class. No.: Q325.6 / .K85 2012
Dewey Class. No.: 006.31
Reinforcement and systemic machine learning for decision making
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Reinforcement and systemic machine learning for decision making
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[electronic resource] /
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Parag Kulkarni.
260
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Hoboken :
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John Wiley & Sons,
$c
2012.
300
$a
1 online resource (422 p.)
490
1
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IEEE Press Series on Systems Science and Engineering ;
$v
v.1
505
0 0
$g
ch. 1:
$t
Introduction to Reinforcement and Systemic Machine Learning --
$g
1.1.
$t
Introduction --
$g
1.2.
$t
Supervised, Unsupervised, and Semisupervised Machine Learning --
$g
1.3.
$t
Traditional Learning Methods and History of Machine Learning --
$g
1.4.
$t
What is Machine Learning? --
$g
1.5.
$t
Machine-Learning Problem --
$g
1.6.
$t
Learning Paradigms --
$g
1.7.
$t
Machine-Learning Techniques and Paradigms --
$g
1.8.
$t
What is Reinforcement Learning? --
$g
1.9.
$t
Reinforcement Function and Environment Function --
$g
1.10.
$t
Need of Reinforcement Learning --
$g
1.11.
$t
Reinforcement Learning and Machine Intelligence --
$g
1.12.
$t
What is Systemic Learning? --
$g
1.13.
$t
What Is Systemic Machine Learning? --
$g
1.14.
$t
Challenges in Systemic Machine Learning --
$g
1.15.
$t
Reinforcement Machine Learning and Systemic Machine Learning --
$g
1.16.
$t
Case Study Problem Detection in a Vehicle --
$g
1.17.
$t
Summary --
$g
Reference --
505
8 0
$g
ch. 2:
$t
Fundamentals of Whole-System, Systemic, and Multiperspective Machine Learning --
$g
2.1.
$t
Introduction --
$g
2.2.
$t
What is Systemic Machine Learning? --
$g
2.3.
$t
Generalized Systemic Machine-Learning Framework --
$g
2.4.
$t
Multiperspective Decision Making and Multiperspective Learning --
$g
2.5.
$t
Dynamic and Interactive Decision Making --
$g
2.6.
$t
The Systemic Learning Framework --
$g
2.7.
$t
System Analysis --
$g
2.8.
$t
Case Study:
$t
Need of Systemic Learning in the Hospitality Industry --
$g
2.9.
$t
Summary --
505
8 0
$g
ch. 3.
$t
:
$t
Reinforcement Learning --
$g
3.1.
$t
Introduction --
$g
3.2.
$t
Learning Agents --
$g
3.3.
$t
Returns and Reward Calculations --
$g
3.4.
$t
Reinforcement Learning and Adaptive Control --
$g
3.5.
$t
Dynamic Systems --
$g
3.6.
$t
Reinforcement Learning and Control --
$g
3.7.
$t
Markov Property and Markov Decision Process --
$g
3.8.
$t
Value Functions --
$g
3.9.
$t
Learning An Optimal Policy (Model-Based and Model-Free Methods) --
$g
3.10.
$t
Dynamic Programming --
$g
3.11.
$t
Adaptive Dynamic Programming --
$g
3.12.
$t
Example:
$t
Reinforcement Learning for Boxing Trainer --
$g
3.13.
$t
Summary --
$g
Reference --
505
8 0
$g
ch. 4:
$t
Systemic Machine Learning and Model --
$g
4.1.
$t
Introduction --
$g
4.2.
$t
A Framework for Systemic Learning --
$g
4.3.
$t
Capturing THE Systemic View --
$g
4.4.
$t
Mathematical Representation of System Interactions --
$g
4.5.
$t
Impact Function --
$g
4.6.
$t
Decision-Impact Analysis --
$g
4.7.
$t
Summary --
505
8 0
$g
ch. 5:
$t
Inference and Information Integration --
$g
5.1.
$t
Introduction --
$g
5.2.
$t
Inference Mechanisms and Need --
$g
5.3.
$t
Integration of Context and Inference --
$g
5.4.
$t
Statistical Inference and Induction --
$g
5.5.
$t
Pure Likelihood Approach --
$g
5.6.
$t
Bayesian Paradigm and Inference --
$g
5.7.
$t
Time-Based Inference --
$g
5.8.
$t
Inference to Build a System View --
$g
5.9.
$t
Summary --
505
8 0
$g
ch. 6:
$t
Adaptive Learning --
$g
6.1.
$t
Introduction --
$g
6.2.
$t
Adaptive Learning and Adaptive Systems --
$g
6.3.
$t
What is Adaptive Machine Learning? --
$g
6.4.
$t
Adaptation and Learning Method Selection Based on Scenario --
$g
6.5.
$t
Systemic Learning and Adaptive Learning --
$g
6.6.
$t
Competitive Learning and Adaptive Learning --
$g
6.7.
$t
Examples --
$g
6.8.
$t
Summary --
505
8 0
$g
ch. 7:
$t
Multiperspective and Whole-System Learning --
$g
7.1.
$t
Introduction --
$g
7.2.
$t
Multiperspective Context Building --
$g
7.3.
$t
Multiperspective Decision Making and Multiperspective Learning --
$g
7.4.
$t
Whole-System Learning and Multiperspective Approaches --
$g
7.5.
$t
Case Study Based on Multiperspective Approach --
$g
7.6.
$t
Limitations to a Multiperspective Approach --
$g
7.7.
$t
Summary --
505
8 0
$g
ch. 8:
$t
Incremental Learning and Knowledge Representation --
$g
8.1.
$t
Introduction --
$g
8.2.
$t
Why Incremental Learning? --
$g
8.3.
$t
Learning from What Is Already Learned --
$g
8.4.
$t
Supervised Incremental Learning --
$g
8.5.
$t
Incremental Unsupervised Learning and Incremental Clustering --
$g
8.6.
$t
Semisupervised Incremental Learning --
$g
8.7.
$t
Incremental and Systemic Learning --
$g
8.8.
$t
Incremental Closeness Value and Learning Method --
$g
8.9.
$t
Learning and Decision-Making Model --
$g
8.10.
$t
Incremental Classification Techniques --
$g
8.11.
$t
Case Study: Incremental Document Classification --
$g
8.12.
$t
Summary --
505
8 0
$g
ch. 9 Knowledge Augmentation: A Machine Learning Perspective --
$g
9.1.
$t
Introduction --
$g
9.2.
$t
Brief History and Related Work --
$g
9.3.
$t
Knowledge Augmentation and Knowledge Elicitation --
$g
9.4.
$t
Life Cycle of Knowledge --
$g
9.5.
$t
Incremental Knowledge Representation --
$g
9.6.
$t
Case-Based Learning and Learning with Reference Knowledge Loss --
$g
9.7.
$t
Knowledge Augmentation: Techniques and Methods --
$g
9.8.
$t
Heuristic Learning --
$g
9.9.
$t
Systemic Machine Learning and Knowledge Augmentation --
$g
9.10.
$t
Knowledge Augmentation in Complex Learning Scenarios --
$g
9.11.
$t
Case Studies --
$g
9.12.
$t
Summary --
505
8 0
$g
ch. 10:
$t
Building a Learning System --
$g
10.1.
$t
Introduction --
$g
10.2.
$t
Systemic Learning System --
$g
10.3.
$t
Algorithm Selection --
$g
10.4.
$t
Knowledge Representation --
$g
10.4.1.
$t
Practical Scenarios and Case Study --
$g
10.5.
$t
Designing a Learning System --
$g
10.6.
$t
Making System to Behave Intelligently --
$g
10.7.
$t
Example-Based Learning --
$g
10.8.
$t
Holistic Knowledge Framework and Use of Reinforcement Learning --
$g
10.9.
$t
Intelligent Agents Deployment and Knowledge Acquisition and Reuse --
$g
10.10.
$t
Case-Based Learning: Human Emotion-Detection System --
$g
10.11.
$t
Holistic View in Complex Decision Problem --
$g
10.12.
$t
Knowledge Representation and Data Discovery --
$g
10.13.
$t
Components --
$g
10.14.
$t
Future of Learning Systems and Intelligent Systems --
$g
10.15.
$t
Summary --
$g
Appendix A:
$t
Statistical Learning Methods --
$g
Appendix B:
$t
Markov Processes.
520
$a
Reinforcement and Systemic Machine Learning for Decision MakingThere are always difficulties in making machines that learn from experience. Complete information is not always available--or it becomes available in bits and pieces over a period of time. With respect to systemic learning, there is a need to understand the impact of decisions and actions on a system over that period of time. This book takes a holistic approach to addressing that need and presents a new paradigm--creating new learning applications and, ultimately, more intelligent machines.The first book of its kind in this new and g.
588
$a
Description based upon print version of record.
650
0
$a
Reinforcement learning.
$3
349131
650
0
$a
Machine learning.
$3
188639
650
0
$a
Decision making.
$3
183849
830
0
$a
IEEE Press series on systems science and engineering.
$3
721177
856
4 0
$u
http://onlinelibrary.wiley.com/book/10.1002/9781118266502
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