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Chitpin, Stephanie – International Journal of Educational Management, 2017
Purpose: The purpose of this paper is to illustrate how associationism mistakenly assumes that direct experience is possible; that is, there is expectation-free observation and association without prior expectation. Thus, associationism assumes that learning involves the absorption of information from the environment itself. However, contrary…
Descriptors: Abstract Reasoning, Associative Learning, Association (Psychology), Philosophy
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Larsen-Freeman, Diane – Language Learning, 2010
Learning inflectional morphology is a vexing problem for second language (L2) learners. Children acquiring their native language also experience some difficulty, which results in their committing overgeneralization errors. Long after individuals have achieved a high level of proficiency in the L2, they are still plagued by uncertainty when it…
Descriptors: Morphemes, Grammar, Second Language Learning, Associative Learning
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Mayor, Julien; Plunkett, Kim – Psychological Review, 2010
We present a neurocomputational model with self-organizing maps that accounts for the emergence of taxonomic responding and fast mapping in early word learning, as well as a rapid increase in the rate of acquisition of words observed in late infancy. The quality and efficiency of generalization of word-object associations is directly related to…
Descriptors: Generalization, Vocabulary Development, Classification, Language Acquisition
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Bott, Lewis; Hoffman, Aaron B.; Murphy, Gregory L. – Journal of Experimental Psychology: General, 2007
Many theories of category learning assume that learning is driven by a need to minimize classification error. When there is no classification error, therefore, learning of individual features should be negligible. The authors tested this hypothesis by conducting three category-learning experiments adapted from an associative learning blocking…
Descriptors: Associative Learning, Classification, Error Patterns, Hypothesis Testing