首页> 外文会议>13th European Conference on Machine Learning, Aug 19-23, 2002, Helsinki, Finland >Discriminative Clustering: Optimal Contingency Tables by Learning Metrics
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Discriminative Clustering: Optimal Contingency Tables by Learning Metrics

机译:区分性聚类:通过学习指标获得的最佳列联表

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The learning metrics principle describes a way to derive metrics to the data space from paired data. Variation of the primary data is assumed relevant only to the extent it causes changes in the auxiliary data. Discriminative clustering finds clusters of primary data that are homogeneous in the auxiliary data. In this paper, discriminative clustering using a mutual information criterion is shown to be asymptotically equivalent to vector quantization in learning metrics. We also present a new, finite-data variant of discriminative clustering and show that it builds contingency tables that detect optimally statistical dependency between the clusters and the auxiliary data. A finite-data algorithm is demonstrated to outperform the older mutual information maximizing variant.
机译:学习指标原理描述了一种从配对数据中导出指标到数据空间的方法。假定主要数据的变化仅与引起辅助数据变化的程度有关。区分性聚类查找在辅助数据中同质的主要数据的聚类。在本文中,使用互信息准则的判别聚类被证明在学习度量中渐近等效于向量量化。我们还提出了一种新的,有区别的聚类的有限数据变体,并表明它建立了列联表,以检测聚类和辅助数据之间的最佳统计依赖性。有限数据算法的性能优于旧的互信息最大化方法。

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