Improved Learning via k-DTW: A Novel Dissimilarity Measure for Curves

This paper introduces -Dynamic Time Warping (-DTW), a novel dissimilarity measure for polygonal curves. -DTW has stronger metric properties than Dynamic Time Warping (DTW) and is more robust to outliers than the Fréchet distance, which are the two gold standards of dissimilarity measures for polygonal curves. We show interesting properties of -DTW and give an exact algorithm as well as a -approximation algorithm for -DTW by a parametric search for the -th largest matched distance. We prove the first dimension-free learning bounds for curves and further learning theoretic results. -DTW not only admits smaller sample size than DTW for the problem of learning the median of curves, where some factors depending on the curves' complexity are replaced by , but we also show a surprising separation on the associated Rademacher and Gaussian complexities: -DTW admits strictly smaller bounds than DTW, by a factor when . We complement our theoretical findings with an experimental illustration of the benefits of using -DTW for clustering and nearest neighbor classification.
View on arXiv@article{krivošija2025_2505.23431, title={ Improved Learning via k-DTW: A Novel Dissimilarity Measure for Curves }, author={ Amer Krivošija and Alexander Munteanu and André Nusser and Chris Schwiegelshohn }, journal={arXiv preprint arXiv:2505.23431}, year={ 2025 } }