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Advances in the combination of supervised classification Methods: an experimental study

机译:监督分类方法的组合进展:一项实验研究

摘要

In this work we were interested in investigating the predictive accuracy of one of the most popular learning schemes for the combination of supervised classification methods: the Stacking Technique proposed by Wolpert (1992) and consolidated by Ting and Witten, (1999) and Seewald (2002). In particular, we made reference to the StackingC (Seewald 2002) as a starting point for our analysis, to which some modifications and extensions were made. Since most of the research on ensembles of classifiers tends to demonstrate that this scheme can perform comparably to the best of the base classifiers as selected by cross-validation, if not better, this motivated us to investigate the performance of the Stacking empirically. An analysis of the results obtained by applying the our Stacking scheme, which includes differences and characteristic implementations compared to what is proposed by the literature, to the set of the dataset generated by means of an experimental design does not lead us to believe that the Stacking scheme is preferable in terms of performances to the use of the best single classifier. It always achieves good performances and is to be considered among the best. On the contrary, in the case of contaminated data, Stacking improves its performances noticeably, and generally appears to be very competitive, above all when the contaminations are more substantial.
机译:在这项工作中,我们有兴趣研究一种有监督分类方法组合的最流行的学习方案之一的预测准确性:由Wolpert(1992)提出并由Ting和Witten(1999)和Seewald(2002)合并的Stacking Technique。 )。特别是,我们以StackingC(Seewald 2002)作为我们分析的起点,对此进行了一些修改和扩展。由于大多数关于分类器集合的研究都倾向于证明,该方案可以与通过交叉验证选择的最佳基础分类器(即使不是更好)相比,具有相同的性能,这激发了我们以经验研究堆叠的性能。对通过实验设计生成的数据集应用我们的Stacking方案(包括与文献所建议的相比的差异和特征实现)所获得的结果的分析并不能使我们相信Stacking就性能而言,该方案比使用最佳单个分类器更可取。它始终可以取得良好的性能,并被认为是最好的。相反,在数据被污染的情况下,尤其是当污染更为严重时,Stacking会显着提高其性能,并且通常看起来非常有竞争力。

著录项

  • 作者

    Mazza Sabina;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 en
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