Publication

1992 - Springer US, Boston, MA, Massachusetts

Language

English

Word Count

43,000 words, Guess

Page Count

172 pages

Physical Format

Electronic resource

Identifiers

and 4 more
  • OCLC Control Number851793946
  • Better World Books9781461366089
  • Better World Books9781461536185
  • Open LibraryOL27085105M

Classifications

  • DDC006.3
  • LCCQ334-342
  • LCCTJ210.2-211.495
and 1 more
  • LCCQ334-342QC174.7-175.

Description

Reinforcement learning is the learning of a mapping from situations to actions so as to maximize a scalar reward or reinforcement signal. The learner is not told which action to take, as in most forms of machine learning, but instead must discover which actions yield the highest reward by trying them. In the most interesting and challenging cases, actions may affect not only the immediate reward, but also the next situation, and through that all subsequent rewards. These two characteristics -- trial-and-error search and delayed reward -- are the most important distinguishing features of reinforcement learning. Reinforcement learning is both a new and a very old topic in AI. The term appears to have been coined by Minsk (1961), and independently in control theory by Walz and Fu (1965). The earliest machine learning research now viewed as directly relevant was Samuel's (1959) checker player, which used temporal-difference learning to manage delayed reward much as it is used today. Of course learning and reinforcement have been studied in psychology for almost a century, and that work has had a very strong impact on the AI/engineering work. One could in fact consider all of reinforcement learning to be simply the reverse engineering of certain psychological learning processes (e.g. operant conditioning and secondary reinforcement). Reinforcement Learning is an edited volume of original research, comprising seven invited contributions by leading researchers.

Subjects

Series Statement

  • The Springer International Series in Engineering and Computer Science, Knowledge Representation, Learning and Expert Systems -- 173
  • Springer International Series in Engineering and Computer Science, Knowledge Representation, Learning and Expert Systems -- 173.

Other Editions

  • Reinforcement LearningElectronic resourceSpringer US1992-01-01
Show 2 more editions

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