结合欧氏距离的实验研究

Wan-Jui Lee, R. Duin, A. Ibba, M. Loog
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引用次数: 7

摘要

组合不同的距离矩阵或不同的表示通常可以提高单个矩阵的性能。在这项工作中,我们实验研究了组合欧几里得距离的性能及其与组合欧几里得距离产生的非欧几里得的关系。在实验中还研究了组合欧几里得距离的非欧几里得程度与这些欧几里得距离之间的相关关系。从结果中,我们观察到将计算的不相似度与欧几里得距离相结合通常比将计算的不相似度与欧几里得距离的平方相结合效果更好。此外,发现这些改进与非欧几里得程度高度相关。另外,两个高度不相关的不相似矩阵组合时,其非欧几里得度较大;两个高度不相似矩阵组合时,其非欧几里得度较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An experimental study on combining Euclidean distances
Combining different distance matrices or dissimilarity representations can often increase the performance of individual ones. In this work, we experimentally study on the performance of combining Euclidean distances and its relationship with the non-Euclideaness produced from combining Euclidean distances. The relationship between the degree of non-Euclideaness from combining Euclidean distances and the correlations between these Euclidean distances are also investigated in the experiments. From the results, we observe that combining dissimilarities computed with Euclidean distances usually performs better than combining dissimilarities computed with squared Euclidean distances. Also, the improvements are found to be highly related to the degree of non-Euclideaness. Moreover, the degree of non-Euclideaness is relatively large if two highly uncorrelated dissimilarity matrices are combined and the degree of non-Euclideaness remains lower if two dissimilarity matrices to be combined are more correlated.
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