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A theory of case-based decisions /
~
Gilboa, Itzhak,
A theory of case-based decisions /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
杜威分類號:
658.4/033
書名/作者:
A theory of case-based decisions // Itzhak Gilboa and David Schmeidler.
作者:
Gilboa, Itzhak,
其他作者:
Schmeidler, David,
面頁冊數:
1 online resource (x, 199 pages) : : digital, PDF file(s).
附註:
Title from publisher's bibliographic system (viewed on 05 Oct 2015).
標題:
Decision making - Mathematical models.
ISBN:
9780511493539 (ebook)
內容註:
1. Prologue. 1. The scope of this book. 2. Meta-theoretical vocabulary. 3. Meta-theoretical prejudices -- 2. Decision rules. 4. Elementary formula and interpretations. 5. Variations and generalizations. 6. CBDT as a behaviorist theory. 7. Case-based prediction -- 3. Axiomatic derivation. 8. Highlights. 9. Model and result. 10. Discussion of the axioms. 11. Proofs -- 4. Conceptual foundations. 12. CBDT and expected utility theory. 13. CBDT and rule-based systems -- 5. Planning. 14. Representation and evaluation of plans. 15. Axiomatic derivation -- 6. Repeated choice. 16. Cumulative utility maximization. 17. The potential -- 7. Learning and induction. 18. Learning to maximize expected payoff. 19. Learning the similarity function. 20. Two views of induction: CBDT and simplicism.
摘要、提要註:
Gilboa and Schmeidler provide a paradigm for modelling decision making under uncertainty. Unlike the classical theory of expected utility maximization, case-based decision theory does not assume that decision makers know the possible 'states of the world' or the outcomes, let alone the decision matrix attaching outcomes to act-state pairs. Case-based decision theory suggests that people make decisions by analogies to past cases: they tend to choose acts that performed well in the past in similar situations, and to avoid acts that performed poorly. It is an alternative to expected utility theory when both states of the world and probabilities are neither given in the problem nor can be easily constructed. The authors describe the general theory and its relationship to planning, repeated choice problems, inductive inference, and learning; they highlight its mathematical and philosophical foundations and compare it with expected utility theory as well as with rule-based systems.
電子資源:
http://dx.doi.org/10.1017/CBO9780511493539
A theory of case-based decisions /
Gilboa, Itzhak,
A theory of case-based decisions /
Itzhak Gilboa and David Schmeidler. - 1 online resource (x, 199 pages) :digital, PDF file(s).
Title from publisher's bibliographic system (viewed on 05 Oct 2015).
1. Prologue. 1. The scope of this book. 2. Meta-theoretical vocabulary. 3. Meta-theoretical prejudices -- 2. Decision rules. 4. Elementary formula and interpretations. 5. Variations and generalizations. 6. CBDT as a behaviorist theory. 7. Case-based prediction -- 3. Axiomatic derivation. 8. Highlights. 9. Model and result. 10. Discussion of the axioms. 11. Proofs -- 4. Conceptual foundations. 12. CBDT and expected utility theory. 13. CBDT and rule-based systems -- 5. Planning. 14. Representation and evaluation of plans. 15. Axiomatic derivation -- 6. Repeated choice. 16. Cumulative utility maximization. 17. The potential -- 7. Learning and induction. 18. Learning to maximize expected payoff. 19. Learning the similarity function. 20. Two views of induction: CBDT and simplicism.
Gilboa and Schmeidler provide a paradigm for modelling decision making under uncertainty. Unlike the classical theory of expected utility maximization, case-based decision theory does not assume that decision makers know the possible 'states of the world' or the outcomes, let alone the decision matrix attaching outcomes to act-state pairs. Case-based decision theory suggests that people make decisions by analogies to past cases: they tend to choose acts that performed well in the past in similar situations, and to avoid acts that performed poorly. It is an alternative to expected utility theory when both states of the world and probabilities are neither given in the problem nor can be easily constructed. The authors describe the general theory and its relationship to planning, repeated choice problems, inductive inference, and learning; they highlight its mathematical and philosophical foundations and compare it with expected utility theory as well as with rule-based systems.
ISBN: 9780511493539 (ebook)Subjects--Topical Terms:
337886
Decision making
--Mathematical models.
LC Class. No.: HD30.23 / .G53 2001
Dewey Class. No.: 658.4/033
A theory of case-based decisions /
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http://dx.doi.org/10.1017/CBO9780511493539
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