Machine Learning Proceedings 1991

Machine Learning Proceedings 1991

Proceedings of the Eighth International Conference, Evanston, Illinois, June, 1991
1991, Pages 51-54
Machine Learning Proceedings 1991

The Importance of Causal Structure and Facts in Evaluating Explanations

https://doi.org/10.1016/B978-1-55860-200-7.50014-3Get rights and content

Abstract

Explanation-based Learning often requires that one among many incomplete, competing explanations is chosen. The paper describes an experiment in which human subjects ranked explanations that differ with respect to characteristics applicable in Explanation-based Learning. The two characteristics that were varied in the experiment were: causal chaining of rules used in the explanation, and the degree of overlap between the facts in the example and the facts in the explanation. The results of the experiment show that people prefer explanations with good causal structure. Explanations that use more facts from the example are preferred over those that use less facts, but the fact overlap is more important when the causal structure is of high quality.

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