基于组合聚合策略的多分类器规则归纳

J. Stefanowski, Sławomir Nowaczyk
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引用次数: 7

摘要

本文对基于粗糙集的规则归纳算法MODLEM在多分类器框架下的应用进行了实验研究。特别注意使用称为combiner的元分类器,它学习如何聚合组件分类器的答案。实验结果表明,组合器的分类改进范围取决于各分量分类器误差的独立性。此外,我们还总结了在其他多分类器中使用MODLEM的经验,即bagging和n/sup 2/分类器。
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On using rule induction in multiple classifiers with a combiner aggregation strategy
The paper is an experimental study of using the rough sets based rule induction algorithm MODLEM in the framework of multiple classifiers. Particular attention is paid to using a meta-classifier called combiner, which learns how to aggregate answers of component classifiers. The experimental results confirm that the range of classification improvement for the combiner depends on the independence of errors made by the component classifiers. Moreover, we summarize the experience with using MODLEM in other multiple classifiers, namely the bagging and n/sup 2/ classifiers.
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