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Maddox, W. Todd; Filoteo, J. Vincent; Lauritzen, J. Scott; Connally, Emily; Hejl, Kelli D. – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2005
Three experiments were conducted that provide a direct examination of within-category discontinuity manipulations on the implicit, procedural-based learning and the explicit, hypothesis-testing systems proposed in F. G. Ashby, L. A. Alfonso-Reese, A. U. Turken, and E. M. Waldron's (1998) competition between verbal and implicit systems model.…
Descriptors: Experimental Psychology, Cognitive Processes, Learning Processes, Hypothesis Testing
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Kello, Christopher T.; Sibley, Daragh E.; Plaut, David C. – Cognitive Science, 2005
Four pairs of connectionist simulations are presented in which quasi-regular mappings are computed using localist and distributed representations. In each simulation, a control parameter termed input gain was modulated over the only level of representation that mapped inputs to outputs. Input gain caused both localist and distributed models to…
Descriptors: Models, Cognitive Processes, Morphology (Languages), Association (Psychology)
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Perlman, Amotz; Tzelgov, Joseph – Journal of Experimental Psychology: Learning, Memory, and Cognition, 2006
In this article, the authors propose to characterize sequence learning in terms of automatic versus nonautomatic processing and to apply this contrast independently to knowledge acquisition and retrieval. In several experiments of sequence learning, automaticity of both the acquisition and retrieval of the acquired knowledge was independently…
Descriptors: Cognitive Processes, Recall (Psychology), Perceptual Motor Learning, Independent Study
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Ainsworth, Shaaron – Learning and Instruction, 2006
Multiple (external) representations can provide unique benefits when people are learning complex new ideas. Unfortunately, many studies have shown this promise is not always achieved. The DeFT (Design, Functions, Tasks) framework for learning with multiple representations integrates research on learning, the cognitive science of representation and…
Descriptors: Cognitive Processes, Constructivism (Learning), Educational Theories, Heuristics