Publication | Closed Access
Inference and Classification Learning of Abstract Coherent Categories.
27
Citations
35
References
2005
Year
Concept FormationEngineeringObject CategorizationSemantic ProcessingCognitionPsycholinguisticsCategory LearningSemanticsUnderlying CoherenceClassification MethodData SciencePattern RecognitionLanguage StudiesClassification LearningCognitive ScienceAutomatic ClassificationSemantic LearningSemantic InterpretationKnowledge DiscoverySimple Observable FeaturesCategorical ModelAutomated ReasoningClassificationLinguistics
Category learning research has primarily focused on how people learn to classify items using simple observable features. However, classification is only 1 way to learn categories. In addition, many concepts have an underlying coherence that explains the featural similarity among exemplars, such as abstract coherent concepts whose instances differ greatly on their observable features. In 3 experiments, the authors investigated how abstract coherent categories are acquired through 2 common means of category learning, classification and inference. Because inference promotes more focus on within-category information than does classification, they hypothesized that inference learning would lead to a better understanding of the underlying coherence of abstract coherent categories. All 3 experiments support this prediction.
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