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arxiv: 1711.09156 · v1 · pith:44SXKZ37new · submitted 2017-11-24 · 💻 cs.LG

Warped-Linear Models for Time Series Classification

classification 💻 cs.LG
keywords modelstimewarped-linearseriesclassificationfunctionsinvariantlearning
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This article proposes and studies warped-linear models for time series classification. The proposed models are time-warp invariant analogues of linear models. Their construction is in line with time series averaging and extensions of k-means and learning vector quantization to dynamic time warping (DTW) spaces. The main theoretical result is that warped-linear models correspond to polyhedral classifiers in Euclidean spaces. This result simplifies the analysis of time-warp invariant models by reducing to max-linear functions. We exploit this relationship and derive solutions to the label-dependency problem and the problem of learning warped-linear models. Empirical results on time series classification suggest that warped-linear functions better trade solution quality against computation time than nearest-neighbor and prototype-based methods.

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