Learning Algorithms Theory and Applications: Theory and Applications
| AUTHOR | Lakshmivarahan, S. |
| PUBLISHER | Springer (11/02/1981) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
Learning constitutes one of the most important phase of the whole psychological processes and it is essential in many ways for the occurrence of necessary changes in the behavior of adjusting organisms. In a broad sense influence of prior behavior and its consequence upon subsequent behavior is usually accepted as a definition of learning. Till recently learning was regarded as the prerogative of living beings. But in the past few decades there have been attempts to construct learning machines or systems with considerable success. This book deals with a powerful class of learning algorithms that have been developed over the past two decades in the context of learning systems modelled by finite state probabilistic automaton. These algorithms are very simple iterative schemes. Mathematically these algorithms define two distinct classes of Markov processes with unit simplex (of suitable dimension) as its state space. The basic problem of learning is viewed as one of finding conditions on the algorithm such that the associated Markov process has prespecified asymptotic behavior. As a prerequisite a first course in analysis and stochastic processes would be an adequate preparation to pursue the development in various chapters.
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Product Format
Product Details
ISBN-13:
9780387906409
ISBN-10:
0387906401
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
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Page Count:
280
Carton Quantity:
26
Product Dimensions:
6.14 x 0.63 x 9.21 inches
Weight:
0.93 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Reference | Questions & Answers
Reference | Number Systems
Reference | Numerical Analysis
Dewey Decimal:
001.535
Library of Congress Control Number:
81016683
Descriptions, Reviews, Etc.
publisher marketing
Learning constitutes one of the most important phase of the whole psychological processes and it is essential in many ways for the occurrence of necessary changes in the behavior of adjusting organisms. In a broad sense influence of prior behavior and its consequence upon subsequent behavior is usually accepted as a definition of learning. Till recently learning was regarded as the prerogative of living beings. But in the past few decades there have been attempts to construct learning machines or systems with considerable success. This book deals with a powerful class of learning algorithms that have been developed over the past two decades in the context of learning systems modelled by finite state probabilistic automaton. These algorithms are very simple iterative schemes. Mathematically these algorithms define two distinct classes of Markov processes with unit simplex (of suitable dimension) as its state space. The basic problem of learning is viewed as one of finding conditions on the algorithm such that the associated Markov process has prespecified asymptotic behavior. As a prerequisite a first course in analysis and stochastic processes would be an adequate preparation to pursue the development in various chapters.
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Author:
Lakshmivarahan, S.
S. Lakshmivarahan is a George Lynn Cross Research Professor at the School of Computer Science, University of Oklahoma.
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List Price $54.99
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$54.44
