Literature DB >> 31101713

A mathematical theory of semantic development in deep neural networks.

Andrew M Saxe1, James L McClelland2, Surya Ganguli3,4.   

Abstract

An extensive body of empirical research has revealed remarkable regularities in the acquisition, organization, deployment, and neural representation of human semantic knowledge, thereby raising a fundamental conceptual question: What are the theoretical principles governing the ability of neural networks to acquire, organize, and deploy abstract knowledge by integrating across many individual experiences? We address this question by mathematically analyzing the nonlinear dynamics of learning in deep linear networks. We find exact solutions to this learning dynamics that yield a conceptual explanation for the prevalence of many disparate phenomena in semantic cognition, including the hierarchical differentiation of concepts through rapid developmental transitions, the ubiquity of semantic illusions between such transitions, the emergence of item typicality and category coherence as factors controlling the speed of semantic processing, changing patterns of inductive projection over development, and the conservation of semantic similarity in neural representations across species. Thus, surprisingly, our simple neural model qualitatively recapitulates many diverse regularities underlying semantic development, while providing analytic insight into how the statistical structure of an environment can interact with nonlinear deep-learning dynamics to give rise to these regularities.

Entities:  

Keywords:  deep learning; generative models; neural networks; semantic cognition

Year:  2019        PMID: 31101713      PMCID: PMC6561300          DOI: 10.1073/pnas.1820226116

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  17 in total

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6.  Exploring commonalities across participants in the neural representation of objects.

Authors:  Svetlana V Shinkareva; Vicente L Malave; Marcel Adam Just; Tom M Mitchell
Journal:  Hum Brain Mapp       Date:  2011-05-12       Impact factor: 5.038

7.  Distributed and overlapping representations of faces and objects in ventral temporal cortex.

Authors:  J V Haxby; M I Gobbini; M L Furey; A Ishai; J L Schouten; P Pietrini
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9.  The discovery of structural form.

Authors:  Charles Kemp; Joshua B Tenenbaum
Journal:  Proc Natl Acad Sci U S A       Date:  2008-07-31       Impact factor: 11.205

10.  Matching categorical object representations in inferior temporal cortex of man and monkey.

Authors:  Nikolaus Kriegeskorte; Marieke Mur; Douglas A Ruff; Roozbeh Kiani; Jerzy Bodurka; Hossein Esteky; Keiji Tanaka; Peter A Bandettini
Journal:  Neuron       Date:  2008-12-26       Impact factor: 17.173

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  17 in total

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Review 3.  If deep learning is the answer, what is the question?

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4.  Tracking the contribution of inductive bias to individualised internal models.

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5.  Data-driven emergence of convolutional structure in neural networks.

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6.  Sources of Interference in Memory Across Development.

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7.  Learning in deep neural networks and brains with similarity-weighted interleaved learning.

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8.  Universality and individuality in neural dynamics across large populations of recurrent networks.

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Journal:  Adv Neural Inf Process Syst       Date:  2019-12

9.  A neural network model of when to retrieve and encode episodic memories.

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10.  Hierarchical structure is employed by humans during visual motion perception.

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