Journal Article10.1016/J.COGNITION.2020.104365
Deep learning and cognitive science.
Pietro Perconti,Alessio Plebe +1 more
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TL;DR: It will be argued that it is time for cognitive science to seriously come to terms with deep learning, and the reasons why this is the case are spelled out.
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About: This article is published in Cognition. The article was published on 01 Oct 2020. The article focuses on the topics: Connectionism & Mental representation.
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Citations
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Meaning and the Moral Sciences.
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TL;DR: The John Locke Lectures as mentioned in this paper discuss meaning and knowledge in the context of literature, science and reflection, and reference and understanding, and realism and reason in a context of belief systems.
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