Distance measures for point sets and their computation

被引:108
|
作者
Eiter, T
Mannila, H
机构
[1] VIENNA TECH UNIV,CHRISTIAN DOPPLER LAB EXPERT SYST,A-1040 VIENNA,AUSTRIA
[2] UNIV HELSINKI,DEPT COMP SCI,FIN-00014 HELSINKI,FINLAND
关键词
Machine Learning; Distance Function; Polynomial Time; Distance Measure; Minimum Distance;
D O I
10.1007/s002360050075
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We consider the problem of measuring the similarity or distance between two finite sets of points in a metric space, and computing the measure. This problem has applications in, e.g., computational geometry, philosophy of science, updating or changing theories, and machine learning. We review some of the distance functions proposed in the literature, among them the minimum distance link measure, the surjection measure, and the fair surjection measure, and supply polynomial time algorithms for the computation of these measures. Furthermore, we introduce the minimum link measure, a new distance function which is more appealing than the other distance functions mentioned. We also present a polynomial time algorithm for computing this new measure. We further address the issue of defining a metric on point sets. We present the metric infimum method that constructs a metric from any distance functions on point sets. In particular, the metric infimum of the minimum link measure is a quite intuitive. The computation of this measure is shown to be in NP for a broad class of instances; it is NP-hard for a natural problem class.
引用
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页码:109 / 133
页数:25
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