Description: A Markov Decision Process (MDP) is a natural framework for formulating sequential decision-making problems under uncertainty. In recent years, researchers have greatly advanced algorithms for learning and acting in MDPs. This book reviews such algorithms, beginning with well-known dynamic programming methods for solving MDPs such as policy iteration and value iteration, then describes approximate dynamic programming methods such as trajectory based value iteration, and finally moves to reinforcement learning methods such as Q-Learning, SARSA, and least-squares policy iteration. It describes algorithms in a unified framework, giving pseudocode together with memory and iteration complexity analysis for each. Empirical evaluations of these techniques, with four representations across four domains, provide insight into how these algorithms perform with various feature sets in terms of running time and performance. This tutorial provides practical guidance for researchers seeking to extend DP and RL techniques to larger domains through linear value function approximation. The practical algorithms and empirical successes outlined also form a guide for practitioners trying to weigh computational costs, accuracy requirements, and representational concerns. Decision making in large domains will always be challenging, but with the tools presented here this challenge is not insurmountable.
Price: 80.15 GBP
Location: Gloucester
End Time: 2024-11-24T15:02:50.000Z
Shipping Cost: 20.97 GBP
Product Images
Item Specifics
Return postage will be paid by: Buyer
Returns Accepted: Returns Accepted
After receiving the item, your buyer should cancel the purchase within: 60 days
Return policy details:
EAN: 9781601987600
UPC: 9781601987600
ISBN: 9781601987600
MPN: N/A
Book Title: A Tutorial on Linear Function Approximators for Dy
Item Length: 23.4 cm
Number of Pages: 92 Pages
Language: English
Publication Name: A Tutorial on Linear Function Approximators for Dynamic Programming and Reinforcement Learning
Publisher: Now Publishers INC International Concepts
Publication Year: 2013
Subject: Computer Science
Item Height: 234 mm
Item Weight: 143 g
Type: Textbook
Author: Jonathan P. How, Girish Chowdhary, Nicholas Roy, Thomas J. Walsh, Alborz Geramifard, Tellex Stefanie
Series: Foundations and Trends (R) in Machine Learning
Item Width: 156 mm
Format: Paperback