首页> 外文会议>Conference on Multisensor, Multisource Information Fusion: Architectures, Algorithms, and Applications 2004; 20040414-20040415; Orlando,FL; US >DEI-DEO Fusion as a tool for improving decision robustness across metrics in similarity measure based classifiers
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DEI-DEO Fusion as a tool for improving decision robustness across metrics in similarity measure based classifiers

机译:DEI-DEO Fusion作为一种工具,可提高基于相似性度量的分类器中跨度量的决策鲁棒性

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摘要

Decisions derived through similarity measure based classifiers, such as nearest neighbor classifiers, are known to be sensitive to the choice of metrics underlying the similarity measure. Accordingly, it would be advisable to explore means of deriving decisions that are relatively independent of such choice. An approach that suggests itself is to fuse the decisions derived through the different metrics such that the fused decision is independent of the choice of metric and hence more robust. Here, in this study, this 'fusion across metrics' concept is developed and illustrated experimentally with examples using multiple data sets employed in the open literature. For illustrative purposes, the choice of metrics is limited to three cases of the Minkowski metric, namely the Manhattan, Euclidean, and the Supremum metrics and a single pre-defined DEI-DEO fusion logic.
机译:已知通过基于相似性度量的分类器(例如最近邻居分类器)得出的决策对相似性度量基础度量的选择很敏感。因此,建议探索相对独立于这种选择的决策方法。一种建议自己的方法是融合通过不同度量得出的决策,以使融合的决策独立于度量的选择,因此更加健壮。在这里,在这项研究中,这种“跨指标融合”的概念得到了发展,并通过使用公开文献中使用的多个数据集的示例进行了实验说明。出于说明性目的,度量标准的选择仅限于Minkowski度量标准的三种情况,即Manhattan,Euclidean和Supremum度量标准以及单个预定义的DEI-DEO融合逻辑。

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