Unsupervised Coupled Metric Similarity for Non-IID Categorical Data

Published in TKDE, 2018

Authors: Jian, Songlei, Guansong Pang, Longbing Cao, Kai Lu and Hang Gao

Appropriate similarity measures always play a critical role in data analytics, learning and processing. Measuring the intrinsic similarity of categorical data for unsupervised learning has not been substantially addressed, and even less effort has been made for the similarity analysis of categorical data that is not independent and identically distributed (non-IID). In this work, a Coupled Metric Similarity (CMS) is defined for unsupervised learning which flexibly captures the value-to-attribute-to-object heterogeneous coupling relationships. CMS learns the similarities in terms of intrinsic heterogeneous intra- and inter-attribute couplings and attribute-to-object couplings in categorical data. The CMS validity is guaranteed by satisfying metric properties and conditions, and CMS can flexibly adapt to IID to non-IID data. CMS is incorporated into spectral clustering and k-modes clustering and compared with relevant state-of-the-art similarity measures that are not necessarily metrics. The experimental results and theoretical analysis show the CMS effectiveness of capturing independent and coupled data characteristics, which significantly outperforms other similarity measures on most datasets.

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@article{jian2018unsupervised, title={Unsupervised Coupled Metric Similarity for Non-IID Categorical Data}, author={Jian, Songlei and Cao, Longbing and Lu, Kai and Gao, Hang}, journal={IEEE Transactions on Knowledge and Data Engineering}, year={2018}, publisher={IEEE} }