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Solving data fusion problems using robust classifiers combination

机译:使用鲁棒分类器组合解决数据融合问题

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In classification problems where additional information is obtained from different data sources having heterogeneous features, a classifier trained earlier on the original data can not be updated to learn new data. One solution is to fuse this data by using classifiers to learn from each source and to combine outputs in order to get a more accurate final decision. Ensemble methods are well suited to solve data fusion problems since they use all data sources available while taking advantage of complementary information. Robust methods are proposed for combining classifiers, aimed at reducing the effect of outlier classifiers in the ensemble. The proposed methods are shown to have better performance leading to significantly better classification results than the previously employed techniques.
机译:在从具有异构特征的不同数据源获得附加信息的分类问题中,无法更新原始数据上的前面培训的分类器以学习新数据。一种解决方案是使用分类器来融合该数据来从每个源中学到,并组合输出以获得更准确的最终决定。合奏方法非常适合解决数据融合问题,因为它们使用在利用互补信息时可用的所有数据源。提出了组合分类器的鲁棒方法,旨在降低集合中的异常分类器的效果。所提出的方法显示出具有更好的性能,其比以前所采用的技术明显更好地进行分类结果。

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