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Discrete-Time Markov Control Processes: Basic Optimality Criteria Softcover Repri Edition
Contributor(s): Hernandez-Lerma, Onesimo (Author), Lasserre, Jean B. (Author)
ISBN: 1461268842     ISBN-13: 9781461268840
Publisher: Springer
OUR PRICE:   $161.49  
Product Type: Paperback - Other Formats
Published: September 2012
Qty:
Additional Information
BISAC Categories:
- Gardening
- Mathematics | Probability & Statistics - General
- Mathematics | Applied
Dewey: 519
Series: Stochastic Modelling and Applied Probability
Physical Information: 0.5" H x 6.14" W x 9.21" (0.74 lbs) 216 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
This book presents the first part of a planned two-volume series devoted to a systematic exposition of some recent developments in the theory of discrete-time Markov control processes (MCPs). Interest is mainly confined to MCPs with Borel state and control (or action) spaces, and possibly unbounded costs and noncompact control constraint sets. MCPs are a class of stochastic control problems, also known as Markov decision processes, controlled Markov processes, or stochastic dynamic pro- grams; sometimes, particularly when the state space is a countable set, they are also called Markov decision (or controlled Markov) chains. Regardless of the name used, MCPs appear in many fields, for example, engineering, economics, operations research, statistics, renewable and nonrenewable re- source management, (control of) epidemics, etc. However, most of the lit- erature (say, at least 90%) is concentrated on MCPs for which (a) the state space is a countable set, and/or (b) the costs-per-stage are bounded, and/or (c) the control constraint sets are compact. But curiously enough, the most widely used control model in engineering and economics--namely the LQ (Linear system/Quadratic cost) model-satisfies none of these conditions. Moreover, when dealing with "partially observable" systems) a standard approach is to transform them into equivalent "completely observable" sys- tems in a larger state space (in fact, a space of probability measures), which is uncountable even if the original state process is finite-valued.