gogo
Amazon cover image
Image from Amazon.com

Reinforcement and systemic machine learning for decision making / Parag Kulkarni.

By: Material type: TextTextSeries: IEEE Press series on systems science and engineering ; 1.Publication details: Piscataway, NJ : IEEE Press ; Hoboken, NJ : Wiley, c2012.Description: xxi, 285 p. : ill. ; 25 cmISBN:
  • 9780470919996:
  • 047091999X
  • 9781118266502 (electronic bk.)
  • 1118266501 (electronic bk.)
  • 9781118271537 (electronic bk.)
  • 111827153X (electronic bk.)
Subject(s): Genre/Form: Additional physical formats: Print version:: Reinforcement and Systemic Machine Learning for Decision MakingDDC classification:
  • 006.31
LOC classification:
  • .K85 2012
Online resources:
Contents:
Chapter 1: Introduction to Reinforcement and Systemic Machine Learning; 1.1 Introduction; 1.2 Supervised, Unsupervised, and Semisupervised Machine Learning; 1.3 Traditional Learning Methods and History of Machine Learning; 1.4 What is Machine Learning?; 1.5 Machine-Learning Problem; 1.6 Learning Paradigms; 1.7 Machine-Learning Techniques and Paradigms; 1.8 What is Reinforcement Learning?; 1.9 Reinforcement Function and Environment Function; 1.10 Need of Reinforcement Learning
1.11 Reinforcement Learning and Machine Intelligence1.12 What is Systemic Learning?; 1.13 What Is Systemic Machine Learning?; 1.14 Challenges in Systemic Machine Learning; 1.15 Reinforcement Machine Learning and Systemic Machine Learning; 1.16 Case Study Problem Detection in a Vehicle; 1.17 Summary; Reference; Chapter 2: Fundamentals of Whole-System, Systemic, and Multiperspective Machine Learning; 2.1 Introduction; 2.2 What is Systemic Machine Learning?; 2.3 Generalized Systemic Machine-Learning Framework; 2.4 Multiperspective Decision Making and Multiperspective Learning
2.5 Dynamic and Interactive Decision Making2.6 The Systemic Learning Framework; 2.7 System Analysis; 2.8 Case Study: Need of Systemic Learning in the Hospitality Industry; 2.9 Summary; References; Chapter 3: Reinforcement Learning; 3.1 Introduction; 3.2 Learning Agents; 3.3 Returns and Reward Calculations; 3.4 Reinforcement Learning and Adaptive Control; 3.5 Dynamic Systems; 3.6 Reinforcement Learning and Control; 3.7 Markov Property and Markov Decision Process; 3.8 Value Functions; 3.9 Learning An Optimal Policy (Model-Based and Model-Free Methods); 3.10 Dynamic Programming
3.11 Adaptive Dynamic Programming3.12 Example: Reinforcement Learning for Boxing Trainer; 3.13 Summary; Reference; Chapter 4: Systemic Machine Learning and Model; 4.1 Introduction; 4.2 A Framework for Systemic Learning; 4.3 Capturing THE Systemic View; 4.4 Mathematical Representation of System Interactions; 4.5 Impact Function; 4.6 Decision-Impact Analysis; 4.7 Summary; Chapter 5: Inference and Information Integration; 5.1 Introduction; 5.2 Inference Mechanisms and Need; 5.3 Integration of Context and Inference; 5.4 Statistical Inference and Induction; 5.5 Pure Likelihood Approach
5.6 Bayesian Paradigm and Inference5.7 Time-Based Inference; 5.8 Inference to Build a System View; 5.9 Summary; References; Chapter 6: Adaptive Learning; 6.1 Introduction; 6.2 Adaptive Learning and Adaptive Systems; 6.3 What is Adaptive Machine Learning?; 6.4 Adaptation and Learning Method Selection Based on Scenario; 6.5 Systemic Learning and Adaptive Learning; 6.6 Competitive Learning and Adaptive Learning; 6.7 Examples; 6.8 Summary; References; Chapter 7: Multiperspective and Whole-System Learning; 7.1 Introduction; 7.2 Multiperspective Context Building
Summary: 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.
No physical items for this record

IEEE ebook

7.3 Multiperspective Decision Making And Multiperspective Learning

IT Carlow ebook

Includes bibliographical references and index.

Chapter 1: Introduction to Reinforcement and Systemic Machine Learning; 1.1 Introduction; 1.2 Supervised, Unsupervised, and Semisupervised Machine Learning; 1.3 Traditional Learning Methods and History of Machine Learning; 1.4 What is Machine Learning?; 1.5 Machine-Learning Problem; 1.6 Learning Paradigms; 1.7 Machine-Learning Techniques and Paradigms; 1.8 What is Reinforcement Learning?; 1.9 Reinforcement Function and Environment Function; 1.10 Need of Reinforcement Learning

1.11 Reinforcement Learning and Machine Intelligence1.12 What is Systemic Learning?; 1.13 What Is Systemic Machine Learning?; 1.14 Challenges in Systemic Machine Learning; 1.15 Reinforcement Machine Learning and Systemic Machine Learning; 1.16 Case Study Problem Detection in a Vehicle; 1.17 Summary; Reference; Chapter 2: Fundamentals of Whole-System, Systemic, and Multiperspective Machine Learning; 2.1 Introduction; 2.2 What is Systemic Machine Learning?; 2.3 Generalized Systemic Machine-Learning Framework; 2.4 Multiperspective Decision Making and Multiperspective Learning

2.5 Dynamic and Interactive Decision Making2.6 The Systemic Learning Framework; 2.7 System Analysis; 2.8 Case Study: Need of Systemic Learning in the Hospitality Industry; 2.9 Summary; References; Chapter 3: Reinforcement Learning; 3.1 Introduction; 3.2 Learning Agents; 3.3 Returns and Reward Calculations; 3.4 Reinforcement Learning and Adaptive Control; 3.5 Dynamic Systems; 3.6 Reinforcement Learning and Control; 3.7 Markov Property and Markov Decision Process; 3.8 Value Functions; 3.9 Learning An Optimal Policy (Model-Based and Model-Free Methods); 3.10 Dynamic Programming

3.11 Adaptive Dynamic Programming3.12 Example: Reinforcement Learning for Boxing Trainer; 3.13 Summary; Reference; Chapter 4: Systemic Machine Learning and Model; 4.1 Introduction; 4.2 A Framework for Systemic Learning; 4.3 Capturing THE Systemic View; 4.4 Mathematical Representation of System Interactions; 4.5 Impact Function; 4.6 Decision-Impact Analysis; 4.7 Summary; Chapter 5: Inference and Information Integration; 5.1 Introduction; 5.2 Inference Mechanisms and Need; 5.3 Integration of Context and Inference; 5.4 Statistical Inference and Induction; 5.5 Pure Likelihood Approach

5.6 Bayesian Paradigm and Inference5.7 Time-Based Inference; 5.8 Inference to Build a System View; 5.9 Summary; References; Chapter 6: Adaptive Learning; 6.1 Introduction; 6.2 Adaptive Learning and Adaptive Systems; 6.3 What is Adaptive Machine Learning?; 6.4 Adaptation and Learning Method Selection Based on Scenario; 6.5 Systemic Learning and Adaptive Learning; 6.6 Competitive Learning and Adaptive Learning; 6.7 Examples; 6.8 Summary; References; Chapter 7: Multiperspective and Whole-System Learning; 7.1 Introduction; 7.2 Multiperspective Context Building

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.

Description based upon print version of record.

Powered by Koha