Density biased sampling with locality sensitive hashing for outlier detection

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Zhang, Xuyun, Salehi, Mahsa, Leckie, Christopher, Luo, Yun, He, Qiang ORCID: 0000-0002-2607-4556, Zhou, Rui ORCID: 0000-0001-6807-4362 and Kotagiri, Rao (2018) Density biased sampling with locality sensitive hashing for outlier detection. In: 19th International Conference on Web Information Systems Engineering (WISE), 12 Nov 2018 - 15 Nov 2018, Dubai.

Abstract

Outlier or anomaly detection is one of the major challenges in big data analytics since unusual but insightful patterns are often hidden in massive data sets such as sensing data and social networks. Sampling techniques have been a focus for outlier detection to address scalability on big data. The recent study has shown uniform random sampling with ensemble can boost outlier detection performance. However, uniform sampling assumes that all points are of equal importance, which usually fails to hold for outlier detection because some points are more sensitive to sampling than others. Thus, it is necessary and promising to utilise the density information of points to reflect their importance for sampling based detection. In this paper, we formally investigate density biased sampling for outlier detection, and propose a novel density biased sampling approach. To attain scalable density estimation, we use Locality Sensitive Hashing (LSH) for counting the nearest neighbours of a point. Extensive experiments on both synthetic and real-world data sets show that our approach significantly outperforms existing outlier detection methods based on uniform sampling.

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Item type Conference or Workshop Item (Paper)
URI https://vuir.vu.edu.au/id/eprint/48063
DOI 10.1007/978-3-030-02925-8_19
Official URL http://dx.doi.org/10.1007/978-3-030-02925-8_19
ISBN 9783030029241
Subjects Current > FOR (2020) Classification > 4007 Control engineering, mechatronics and robotics
Current > FOR (2020) Classification > 4605 Data management and data science
Current > Division/Research > College of Science and Engineering
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