贝叶斯,理性和非理性

Vsevolod Kapatsinski
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引用次数: 0

摘要

本章回顾了贝叶斯学习方法的主要思想,并与联想方法进行了比较。它回顾并讨论了贝叶斯对联想学习理论的批评。特别是,贝叶斯理论家认为,联想模型不能代表对信念的信心,也不能用经验来更新信心。本章讨论更新信心是否有必要捕捉壕沟,可疑的巧合和类别变异性效应。证据被认为是目前有些不确定的,因为模拟退火通常已经足够了。此外,当数据提示信心更新时,数据提示的更新可能是非规范的,这与贝叶斯关于学习者是理想观察者的概念相反。继Kruschke之后,习得性选择性注意被认为可以解释人类学习偏离理想观察者的许多方式,其中最关键的包括相对于前向阻塞的后向阻塞的弱点。与理想观察者的其他偏离可能是由于生物有机体考虑了信念准确性以外的因素。最后,对生成学习模型和判别学习模型进行了比较。当主动学习是可能的,并且需要逆转观察到的映射时,生成模型被认为是特别可能的。
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Bayes, Rationality, and Rashionality
This chapter reviews the main ideas of Bayesian approaches to learning, compared to associationist approaches. It reviews and discusses Bayesian criticisms of associationist learning theory. In particular, Bayesian theorists have argued that associative models fail to represent confidence in belief and update confidence with experience. The chapter discusses whether updating confidence is necessary to capture entrenchment, suspicious coincidence, and category variability effects. The evidence is argued to be somewhat inconclusive at present, as simulated annealing can often suffice. Furthermore, when confidence updating is suggested by the data, the updating suggested by the data may be non-normative, contrary to the Bayesian notion of the learner as an ideal observer. Following Kruschke, learned selective attention is argued to explain many ways in which human learning departs from that of the ideal observer, most crucially including the weakness of backward relative to forward blocking. Other departures from the ideal observer may be due to biological organisms taking into account factors other than belief accuracy. Finally, generative and discriminative learning models are compared. Generative models are argued to be particularly likely when active learning is a possibility and when reversing the observed mappings may be required.
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