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Sakamoto, Yasuaki; Love, Bradley C. – Journal of Experimental Psychology: Applied, 2010
Work in category learning addresses how humans acquire knowledge and, thus, should inform classroom practices. In two experiments, we apply and evaluate intuitions garnered from laboratory-based research in category learning to learning tasks situated in an educational context. In Experiment 1, learning through predictive inference and…
Descriptors: Feedback (Response), Classification, Grade 5, Inferences
Jones, Matt; Love, Bradley C.; Maddox, W. Todd – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2006
Accounts of learning and generalization typically focus on factors related to lasting changes in representation (i.e., long-term memory). The authors present evidence that shorter term effects also play a critical role in determining performance and that these recency effects can be subdivided into perceptual and decisional components.…
Descriptors: Long Term Memory, Perception, Classification, Short Term Memory
Gureckis, Todd M.; Love, Bradley C. – Infancy, 2004
Computational models of infant categorization often fail to elaborate the transitional mechanisms that allow infants to achieve adult performance. In this article, we apply a successful connectionist model of adult category learning to developmental data. The Supervised and Unsupervised Stratified Adaptive Incremental Network (SUSTAIN) model is…
Descriptors: Infants, Classification, Adult Learning, Computation