元学习规则学习启发式研究

Frederik Janssen, Johannes Fürnkranz
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引用次数: 14

摘要

本文的目的是研究规则学习启发式在多大程度上可以从经验中学习。为此,我们让规则学习器学习大量规则,并记录它们在测试集上的表现。随后,我们训练回归算法根据规则的训练集特征来预测规则的测试集性能。我们研究了这个基本场景的几种变体,包括预测候选规则本身的性能更好还是预测最终规则的性能更好的问题。我们在一些独立评估集上的实验表明,学习启发式优于标准规则学习启发式。我们还分析了他们在覆盖空间中的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Meta-Learning Rule Learning Heuristics
The goal of this paper is to investigate to what extent a rule learning heuristic can be learned from experience. To that end, we let a rule learner learn a large number of rules and record their performance on the test set. Subsequently, we train regression algorithms on predicting the test set performance of a rule from its training set characteristics. We investigate several variations of this basic scenario, including the question whether it is better to predict the performance of the candidate rule itself or of the resulting final rule. Our experiments on a number of independent evaluation sets show that the learned heuristics outperform standard rule learning heuristics. We also analyze their behavior in coverage space.
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