Keeping it Short and Simple: Summarising Complex Event Sequences with Multivariate Patterns
December 22, 2015 Β· Declared Dead Β· π Knowledge Discovery and Data Mining
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Authors
Roel Bertens, Jilles Vreeken, Arno Siebes
arXiv ID
1512.07056
Category
cs.AI: Artificial Intelligence
Citations
39
Venue
Knowledge Discovery and Data Mining
Last Checked
4 months ago
Abstract
We study how to obtain concise descriptions of discrete multivariate sequential data. In particular, how to do so in terms of rich multivariate sequential patterns that can capture potentially highly interesting (cor)relations between sequences. To this end we allow our pattern language to span over the domains (alphabets) of all sequences, allow patterns to overlap temporally, as well as allow for gaps in their occurrences. We formalise our goal by the Minimum Description Length principle, by which our objective is to discover the set of patterns that provides the most succinct description of the data. To discover high-quality pattern sets directly from data, we introduce DITTO, a highly efficient algorithm that approximates the ideal result very well. Experiments show that DITTO correctly discovers the patterns planted in synthetic data. Moreover, it scales favourably with the length of the data, the number of attributes, the alphabet sizes. On real data, ranging from sensor networks to annotated text, DITTO discovers easily interpretable summaries that provide clear insight in both the univariate and multivariate structure.
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