Literature DB >> 23335577

Human semi-supervised learning.

Bryan R Gibson1, Timothy T Rogers, Xiaojin Zhu.   

Abstract

Most empirical work in human categorization has studied learning in either fully supervised or fully unsupervised scenarios. Most real-world learning scenarios, however, are semi-supervised: Learners receive a great deal of unlabeled information from the world, coupled with occasional experiences in which items are directly labeled by a knowledgeable source. A large body of work in machine learning has investigated how learning can exploit both labeled and unlabeled data provided to a learner. Using equivalences between models found in human categorization and machine learning research, we explain how these semi-supervised techniques can be applied to human learning. A series of experiments are described which show that semi-supervised learning models prove useful for explaining human behavior when exposed to both labeled and unlabeled data. We then discuss some machine learning models that do not have familiar human categorization counterparts. Finally, we discuss some challenges yet to be addressed in the use of semi-supervised models for modeling human categorization.
Copyright © 2013 Cognitive Science Society, Inc.

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Mesh:

Year:  2013        PMID: 23335577     DOI: 10.1111/tops.12010

Source DB:  PubMed          Journal:  Top Cogn Sci        ISSN: 1756-8757


  9 in total

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Journal:  Cerebellum       Date:  2016-06       Impact factor: 3.847

Review 2.  Robust speech perception: recognize the familiar, generalize to the similar, and adapt to the novel.

Authors:  Dave F Kleinschmidt; T Florian Jaeger
Journal:  Psychol Rev       Date:  2015-04       Impact factor: 8.934

3.  A little labeling goes a long way: Semi-supervised learning in infancy.

Authors:  Alexander LaTourrette; Sandra R Waxman
Journal:  Dev Sci       Date:  2018-09-18

4.  Defining the Role Of Language in Infants' Object Categorization with Eye-tracking Paradigms.

Authors:  Alexander LaTourrette; Sandra R Waxman
Journal:  J Vis Exp       Date:  2019-02-08       Impact factor: 1.355

5.  Exploring the Structure of Spatial Representations.

Authors:  Tamas Madl; Stan Franklin; Ke Chen; Robert Trappl; Daniela Montaldi
Journal:  PLoS One       Date:  2016-06-27       Impact factor: 3.240

6.  The helpfulness of category labels in semi-supervised learning depends on category structure.

Authors:  Wai Keen Vong; Daniel J Navarro; Andrew Perfors
Journal:  Psychon Bull Rev       Date:  2016-02

7.  Impact of dialect use on a basic component of learning to read.

Authors:  Megan C Brown; Daragh E Sibley; Julie A Washington; Timothy T Rogers; Jan R Edwards; Maryellen C MacDonald; Mark S Seidenberg
Journal:  Front Psychol       Date:  2015-03-24

8.  Untested assumptions perpetuate stereotyping: Learning in the absence of evidence.

Authors:  William T L Cox; Xizhou Xie; Patricia G Devine
Journal:  J Exp Soc Psychol       Date:  2022-06-25

9.  When unsupervised training benefits category learning.

Authors:  Franziska Bröker; Bradley C Love; Peter Dayan
Journal:  Cognition       Date:  2021-12-23
  9 in total

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