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A causal framework for integrating learning and reasoning

机译:整合学习和推理的因果框架

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摘要

Can the phenomena of associative learning be replaced wholesale by a prepositional reasoning system? Mitchell et al. make a strong case against an automatic, unconscious, and encapsulated associative system. However, their propositional account fails to distinguish inferences based on actions from those based on observation. Causal Bayes networks remedy this shortcoming, and also provide an overarching framework for both learning and reasoning. On this account, causal representations are primary, but associative learning processes are not excluded a priori.
机译:介词学习系统能否全面取代联想学习现象? Mitchell等。强烈反对自动的,无意识的和封装的关联系统。但是,他们的命题说明无法将基于行动的推论与基于观察的推论区分开。因果贝叶斯网络弥补了这一缺陷,并为学习和推理提供了一个总体框架。因此,因果表示是主要的,但联想学习过程并不排除在先。

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  • 来源
    《Behavioral and Brain Sciences》 |2009年第2期|211-212|共2页
  • 作者

    David A. Lagnado;

  • 作者单位

    Department of Cognitive, Perceptual, and Brain Sciences, University College London, London WC1E6BT, United Kingdom;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 02:20:55

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