Publications:Interactive clustering for exploring multiple data streams at different time scales and granularity

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Title Interactive clustering for exploring multiple data streams at different time scales and granularity
Author
Year 2019
PublicationType Conference Paper
Journal
HostPublication Proceedings of the Workshop on Interactive Data Mining, WIDM 2019
Conference 1st Workshop on Interactive Data Mining, WIDM 2019, co-located with 12th ACM International Conference on Web Search and Data Mining, WSDM 2019, 15 February 2019
DOI http://dx.doi.org/10.1145/3304079.3310286
Diva url http://hh.diva-portal.org/smash/record.jsf?searchId=1&pid=diva2:1391299
Abstract

We approach the problem of identifying and interpreting clusters over different time scales and granularity in multivariate time series data. We extract statistical features over a sliding window of each time series, and then use a Gaussian mixture model to identify clusters which are then projected back on the data streams. The human analyst can then further analyze this projection and adjust the size of the sliding window and the number of clusters in order to capture the different types of clusters over different time scales. We demonstrate the effectiveness of our approach in two different application scenarios: (1) fleet management and (2) district heating, wherein each scenario, several different types of meaningful clusters can be identified when varying over these dimensions. © 2019 Copyright held by the owner/author(s). Publication rights licensed to ACM.