Journal
DATA MINING AND KNOWLEDGE DISCOVERY
Volume 28, Issue 5-6, Pages 1455-1479Publisher
SPRINGER
DOI: 10.1007/s10618-014-0364-z
Keywords
Time-series classification; Time-series factorization; Data mining
Funding
- European Comission through project REDUCTION [288254]
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Time-series analysis is an important domain of machine learning and a plethora of methods have been developed for the task. This paper proposes a new representation of time series, which in contrast to existing approaches, decomposes a time-series dataset into latent patterns and membership weights of local segments to those patterns. The process is formalized as a constrained objective function and a tailored stochastic coordinate descent optimization is applied. The time-series are projected to a new feature representation consisting of the sums of the membership weights, which captures frequencies of local patterns. Features from various sliding window sizes are concatenated in order to encapsulate the interaction of patterns from different sizes. The derived representation offers a set of features that boosts classification accuracy. Finally, a large-scale experimental comparison against 11 baselines over 43 real life datasets, indicates that the proposed method achieves state-of-the-art prediction accuracy results.
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