Abstract

Motivated by a real-world data set of more than 40 000 observations, we consider single linkage clustering of large data sets in high-dimensional spaces. In this particular case, the data we consider are observations in the space of one-dimensional submanifolds of Euclidean space. This data set is so large that the individual observations cannot each be inspected. A goal of the analysis is to produce a partial ordering of the data so that a useful inspection of selected observations can take place. An essential step is construction of a metric on the objects in this high-dimensional space that can be computed fairly quickly. The size of the problem makes the running time of Prim's algorithm (the fastest available algorithm for finding a minimal spanning tree of a complete graph) prohibitive. We have developed several methods which approximate the single linkage tree. We report the result of applying our approximations to the data set.

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