Efficient Clustering of Uncertain Data

Hong Kong(2006)

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摘要
We study the problem of clustering data objects whose locations are uncertain. A data object is represented by an uncertainty region over which a probability density function (pdf) is defined. One method to cluster uncertain objects of this sort is to apply the UK-means algorithm, which is based on the traditional K-means algorithm. In UK-means, an object is assigned to the cluster whose representative has the smallest expected distance to the object. For arbitrary pdf, calculating the expected distance between an object and a cluster representative requires expensive integration computation. We study various pruning methods to avoid such expensive expected distance calculation.
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关键词
expensive expected distance calculation,cluster representative,pattern clustering,efficient clustering,expected distance,cluster uncertain object,uncertain data,uk-means algorithm,probability density function,expensive integration computation,uncertain data clustering,arbitrary pdf,smallest expected distance,pruning method,data handling,data object,clustering data object,probability,k means algorithm
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