2012
DOI: 10.1037/a0028719
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Bayesian analogy with relational transformations.

Abstract: How can humans acquire relational representations that enable analogical inference and other forms of high-level reasoning? Using comparative relations as a model domain, we explore the possibility that bottom-up learning mechanisms applied to objects coded as feature vectors can yield representations of relations sufficient to solve analogy problems. We introduce Bayesian analogy with relational transformations (BART) and apply the model to the task of learning first-order comparative relations (e.g., larger,… Show more

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Cited by 54 publications
(61 citation statements)
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References 144 publications
(207 reference statements)
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“…The simulation results reported by Lu et al (2012) suggest that concepts related to symbolic magnitudes can be discovered by inductive learning, rather than simply assumed to be directly available in long-term memory. Moreover, the Bayesian approach in general (and the BART model in particular) implies that magnitudes will be represented not as deterministic values, but rather as probability distributions.…”
Section: How Are Magnitudes Generated?mentioning
confidence: 99%
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“…The simulation results reported by Lu et al (2012) suggest that concepts related to symbolic magnitudes can be discovered by inductive learning, rather than simply assumed to be directly available in long-term memory. Moreover, the Bayesian approach in general (and the BART model in particular) implies that magnitudes will be represented not as deterministic values, but rather as probability distributions.…”
Section: How Are Magnitudes Generated?mentioning
confidence: 99%
“…Fig. 1 includes feature vectors for 30 example animals based on the 50 features most highly associated with a larger set of animal names (Lu et al, 2012). Although these ''Leuven vectors'' presumably only approximate people's knowledge about animal concepts, they have the great virtue of being derived from independent sources of data, rather than being hand-coded.…”
Section: How Are Magnitudes Generated?mentioning
confidence: 99%
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