Journal article

Discovering outlying aspects in large datasets

NX Vinh, J Chan, S Romano, J Bailey, C Leckie, K Ramamohanarao, J Pei

Data Mining and Knowledge Discovery | Published : 2016

Abstract

We address the problem of outlying aspects mining: given a query object and a reference multidimensional data set, how can we discover what aspects (i.e., subsets of features or subspaces) make the query object most outlying? Outlying aspects mining can be used to explain any data point of interest, which itself might be an inlier or outlier. In this paper, we investigate several open challenges faced by existing outlying aspects mining techniques and propose novel solutions, including (a) how to design effective scoring functions that are unbiased with respect to dimensionality and yet being computationally efficient, and (b) how to efficiently search through the exponentially large search ..

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University of Melbourne Researchers