Conceptual knowledge is acquired through recurrent experiences, by extracting statistical regularities at different levels of granularity. At a fine level, patterns of feature co-occurrence are categorized into objects. At a coarser level, patterns of concept co-occurrence are categorized into contexts. We present and test CONCAT, a connectionist model that simultaneously learns to categorize objects and contexts. The model contains two hierarchically organized CALM modules (Murre, Phaf, & Wolters, 1992). The first module, the Object Module, forms object representations based on co-occurrences between features. These representations are used as input for the second module, the Context Module, which categorizes contexts based on object co-occurrences. Feedback connections from the Context Module to the Object Module send activation from the active context to those objects that frequently occur within this context. We demonstrate that context feedback contributes to the successful categorization of objects, especially when bottom-up feature information is degraded or ambiguous.

Acquiring Contextualized Concepts: A Connectionist Approach / Saskia Van, Dantzig; Raffone, Antonino; Bernhard, Hommel. - In: COGNITIVE SCIENCE. - ISSN 0364-0213. - STAMPA. - 35:6(2011), pp. 1162-1189. [10.1111/j.1551-6709.2011.01178.x]

Acquiring Contextualized Concepts: A Connectionist Approach

RAFFONE, Antonino;
2011

Abstract

Conceptual knowledge is acquired through recurrent experiences, by extracting statistical regularities at different levels of granularity. At a fine level, patterns of feature co-occurrence are categorized into objects. At a coarser level, patterns of concept co-occurrence are categorized into contexts. We present and test CONCAT, a connectionist model that simultaneously learns to categorize objects and contexts. The model contains two hierarchically organized CALM modules (Murre, Phaf, & Wolters, 1992). The first module, the Object Module, forms object representations based on co-occurrences between features. These representations are used as input for the second module, the Context Module, which categorizes contexts based on object co-occurrences. Feedback connections from the Context Module to the Object Module send activation from the active context to those objects that frequently occur within this context. We demonstrate that context feedback contributes to the successful categorization of objects, especially when bottom-up feature information is degraded or ambiguous.
2011
concept learning; hierarchical categorization; neural network; top-down context influence
01 Pubblicazione su rivista::01a Articolo in rivista
Acquiring Contextualized Concepts: A Connectionist Approach / Saskia Van, Dantzig; Raffone, Antonino; Bernhard, Hommel. - In: COGNITIVE SCIENCE. - ISSN 0364-0213. - STAMPA. - 35:6(2011), pp. 1162-1189. [10.1111/j.1551-6709.2011.01178.x]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/376427
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