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Generalization, similarity, and Bayesian inference
Joshua B. Tenenbaum
,
Thomas L. Griffiths
Research output
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Contribution to journal
›
Article
›
peer-review
573
Scopus citations
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Keyphrases
Bayesian Framework
50%
Bayesian Inference
100%
Continuous Metrics
100%
Explanatory Power
50%
Exponential Decay Function
50%
Generalized Gradient
50%
Metric Space
50%
Natural Kinds
50%
Novel Stimuli
50%
Psychological Space
50%
Representational Structure
50%
Set-theoretic Methods
50%
Set-theoretic Model
100%
Space Model
50%
Spatial Approach
50%
Tversky
50%
Universal Generalization
50%
Universal Law
50%
Mathematics
Basic Assumption
100%
Bayesian
100%
Bayesian Inference
100%
Explanatory Power
100%
Metric Space
100%
Natural Kind
100%
Space Model
100%
Universal Generalization
100%
Wide Range
100%
Computer Science
Basic Assumption
50%
Bayesian Framework
50%
Explanatory Power
50%
Exponential Decay
50%
Metric Space
50%
Psychological Space
50%
Theoretic Model
100%
Social Sciences
Psychology
100%
Economics, Econometrics and Finance
Bayesian
100%