Retrieval practice and judgements of learning enhance transfer of physiology information.

Adv Health Sci Educ Theory Pract

Department of Health Sciences and Kinesiology, Georgia Southern University, P.O. Box 8076, Statesboro, GA, 30460, USA.

Published: August 2019

It is well-documented that retrieval practice enhances the recall of simple and complex information (Karpicke and Aue in Educ Psychol Rev 27(2):317-326, 2015). Evidence is also accumulating that retrieval practice can enhance other cognitive processes such as the ability to critically evaluate research articles (Dobson et al. in Med Educ 52(5):513-525, 2018) and transfer of learning (Butler in J Exp Psychol Learn Mem Cogn 36(5):1118, 2010). One aim of this investigation was to explore the effects of retrieval practice on transfer of learning with physiology information. A second aim was to compare recall and transfer of physiology information following retrieval practice versus a judgment of learning task (JOL) that is potentially less time consuming for students to use. Participants were randomly assigned to learn three physiology texts using each of the following strategies: (1) studying a text four times (S-S-S-S), (2) studying and then retrieving a text two times (S-R-S-R), and (3) studying a text four times while completing multiple JOL during the second and fourth repetitions (S-S/J-S-S/J). Recall and accuracy on transfer questions were assessed 1 week after the learning phase, and the results were analyzed using repeated measures ANOVAs. The S-R-S-R strategy (21.35 ± 1.08%) produced significantly greater recall than the S-S-S-S strategy (17.35 ± 0.86%), and both the S-R-S-R (44.60 ± 2.55%) and S-S/J-S-S/J (41.79 ± 2.63%) strategies lead to significantly greater transfer than the S-S-S-S strategy (36.07 ± 2.40%). These results provide evidence that retrieval practice enhances recall and transfer of physiology information and that a JOL task can also prove to be beneficial but to a lesser degree.

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http://dx.doi.org/10.1007/s10459-019-09881-wDOI Listing

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