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Rowland, Lee A.; Shanks, David R. – Journal of Experimental Psychology: Human Perception and Performance, 2006
The authors studied the role of attention as a selection mechanism in implicit learning by examining the effect on primary sequence learning of performing a demanding target-selection task. Participants were trained on probabilistic sequences in a novel version of the serial reaction time (SRT) task, with dual- and triple-stimulus participants…
Descriptors: Sequential Learning, Attention Control, Reaction Time, Stimuli
Jacobson, M. Jeffrey; Sisemore, David A. – Southern Journal of Educational Research, 1976
Results indicate that subjects first observing apparatus operation by electromechanical means performed task better than those who had not, and that there is no significant difference between performance of subjects who had observed demonstration by electromechanical device and those who had observed a human model. Applicability of findings…
Descriptors: Imitation, Laboratory Experiments, Learning Processes, Models

Johnson, G. J. – Psychological Review, 1991
An associative model of serial learning is described based on the assumption that the effective stimulus for a serial-list item is generated by adaptation-level coding of the item's ordinal position. How the model can generate predictions of aspects of serial-learning data is illustrated. (SLD)
Descriptors: Association (Psychology), Associative Learning, Coding, Difficulty Level