EFFECTS OF EXAMPLES AND THEIR EXPLANATIONS IN A LESSON ON RECURSION - A PRODUCTION SYSTEM-ANALYSIS

被引:28
作者
PIROLLI, P
机构
[1] University of California, Berkeley
关键词
D O I
10.1207/s1532690xci0803_1
中图分类号
G44 [教育心理学];
学科分类号
0402 ; 040202 ;
摘要
Two studies examined how examples and their explanations affect learning to program recursive functions. The results are analyzed in the context of a production system model of analogical problem solving, cognitive skill acquisition, and practice. In Experiment 1, subjects received an example of a recursive function, were trained to criterion on one set of recursive functions, and were tested on transfer to a larger set of recursive functions. The structure of the example solution (how it was written) was explained to one group of subjects, whereas the process generated by the example (how it worked) was explained to another group. The explanation of structure was found to reduce training time when compared with the explanation of process. In Experiment 2, subjects were presented with examples that shared many parts of their solutions with training problems (high-similarity examples) or shared few parts with training problems (low-similarity examples). Examples reduced errors on the first opportunity for acquiring a skill but did not affect subsequent rates of improvement. Increases in overall similarity between example and target solutions (a) reduced learning errors on parts of target solution not analogous to the example, (b) did not reduce errors on parts of the target solution analogous to the example, and (c) did not increase rates of erroneous intrusions from the example. Examples appear to facilitate the initial acquisition of cognitive skills, have no interaction with the strengthening of skills, and facilitate weak-method problem solving that does not involve direct analogies from the examples. © 1991, Taylor & Francis Group, LLC. All rights reserved.
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页码:207 / 259
页数:53
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