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arxiv: 1903.01454 · v2 · pith:LX6KWAKSnew · submitted 2019-03-04 · 💻 cs.LG · stat.ML

Making the Dynamic Time Warping Distance Warping-Invariant

classification 💻 cs.LG stat.ML
keywords dtw-distancetimedistancewarping-invariantcopedynamicinconsistencynearest-neighbor
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The literature postulates that the dynamic time warping (dtw) distance can cope with temporal variations but stores and processes time series in a form as if the dtw-distance cannot cope with such variations. To address this inconsistency, we first show that the dtw-distance is not warping-invariant. The lack of warping-invariance contributes to the inconsistency mentioned above and to a strange behavior. To eliminate these peculiarities, we convert the dtw-distance to a warping-invariant semi-metric, called time-warp-invariant (twi) distance. Empirical results suggest that the error rates of the twi and dtw nearest-neighbor classifier are practically equivalent in a Bayesian sense. However, the twi-distance requires less storage and computation time than the dtw-distance for a broad range of problems. These results challenge the current practice of applying the dtw-distance in nearest-neighbor classification and suggest the proposed twi-distance as a more efficient and consistent option.

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