40 students (M age = 13.5 yr., SD = 1) from a rural south Georgia school system participated. 20 participants (11 boys, 9 girls) were receiving special education services for diagnosed learning disabilities, and 20 were general education students (10 boys, 10 girls). Students attempted to memorize a list of 15 words in 1 min., tried to recall the words, and then repeated the process for each of 10-word lists. As predicted, students with diagnosed learning disabilities recalled fewer words overall and fewer critical lures than did the general education students.

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http://dx.doi.org/10.2466/pr0.100.3.713-720DOI Listing

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