Qualitative representations : how people reason and learn about the continuous world / Kenneth D. Forbus.
2018
BF311
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Title
Qualitative representations : how people reason and learn about the continuous world / Kenneth D. Forbus.
Author
ISBN
9780262349802 (electronic bk.)
0262349809 (electronic bk.)
9780262038942
0262038943
0262349809 (electronic bk.)
9780262038942
0262038943
Published
Cambridge : The MIT Press, [2018]
Language
English
Description
1 online resource (xvi, 424 pages)
Call Number
BF311
Dewey Decimal Classification
153
Summary
An argument that qualitative representations -- symbolic representations that carve continuous phenomena into meaningful units -- are central to human cognition. In this book, Kenneth Forbus proposes that qualitative representations hold the key to one of the deepest mysteries of cognitive science: how we reason and learn about the continuous phenomena surrounding us. Forbus argues that qualitative representations -- symbolic representations that carve continuous phenomena into meaningful units -- are central to human cognition. Qualitative representations provide a basis for commonsense reasoning, because they enable practical reasoning with very little data; this makes qualitative representations a useful component of natural language semantics. Qualitative representations also provide a foundation for expert reasoning in science and engineering by making explicit the broad categories of things that might happen and enabling causal models that help guide the application of more quantitative knowledge as needed. Qualitative representations are important for creating more human-like artificial intelligence systems with capabilities for spatial reasoning, vision, question answering, and understanding natural language. Forbus discusses, among other topics, basic ideas of knowledge representation and reasoning; qualitative process theory; qualitative simulation and reasoning about change; compositional modeling; qualitative spatial reasoning; and learning and conceptual change. His argument is notable both for presenting an approach to qualitative reasoning in which analogical reasoning and learning play crucial roles and for marshaling a wide variety of evidence, including the performance of AI systems. Cognitive scientists will find Forbus's account of qualitative representations illuminating; AI scientists will value Forbus's new approach to qualitative representations and the overview he offers.
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OCLC-licensed vendor bibliographic record.
Series
MIT Press
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