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Fuzzy' Versus 'Nonfuzzy' in Combining Classifiers Designed by Boosting

机译:Boosting设计的组合分类器中的“模糊”对“非模糊”

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Boosting is recognized as one of the most successful techniques for generating classifier ensembles. Typically, the classifier outputs are combined by the weighted majority vote. The purpose of this study is to demonstrate the advantages of some fuzzy combination methods for ensembles of classifiers designed by Boosting. We ran two-fold cross-validation experiments on six benchmark data sets to compare the fuzzy and nonfuzzy combination methods. On the "fuzzy side" we used the fuzzy integral and the decision templates with different similarity measures. On the "nonfuzzy side" we tried the weighted majority vote as well as simple combiners such as the majority vote, minimum, maximum, average, product, and the Naive-Bayes combination. In our experiments, the fuzzy combination methods performed consistently better than the nonfuzzy methods. The weighted majority vote showed a stable performance, though slightly inferior to the performance of the fuzzy combiners.
机译:Boosting被认为是生成分类器合奏的最成功技术之一。通常,分类器输出是通过加权多数票合并的。这项研究的目的是证明某些模糊组合方法在Boosting设计的分类器集合中的优势。我们对六个基准数据集进行了两次交叉验证实验,以比较模糊和非模糊组合方法。在“模糊方面”,我们使用具有不同相似性度量的模糊积分和决策模板。在“无模糊方面”,我们尝试了加权多数票以及简单的合并器,例如多数票,最小,最大,平均值,乘积和朴素贝叶斯组合。在我们的实验中,模糊组合方法的性能始终优于非模糊方法。加权多数投票显示出稳定的性能,尽管稍逊于模糊组合器的性能。

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