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Proulx, Michael J. – Journal of Experimental Psychology: Human Perception and Performance, 2007
Understanding the relative role of top-down and bottom-up guidance is crucial for models of visual search. Previous studies have addressed the role of top-down and bottom-up processes in search for a conjunction of features but with inconsistent results. Here, the author used an attentional capture method to address the role of top-down and…
Descriptors: Probability, Predictor Variables, Visual Perception, Models
Peer reviewedHancock, Thomas E.; And Others – Machine-Mediated Learning, 1995
In machine-mediated learning environments, there is a need for more reliable methods of calculating the probability that a learner's response will be correct in future trials. A combination of domain-independent response-state measures of cognition along with two instructional variables for maximum predictive ability are demonstrated. (Author/LRW)
Descriptors: Academic Achievement, Cognitive Style, Computer Assisted Instruction, Educational Environment

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