Times series averaging from a probabilistic interpretation of time-elastic kernel
Pierre-Fran\c{c}ois Marteau (IRISA)

TL;DR
This paper introduces probabilistic methods for time series averaging using elastic kernels, proposing two algorithms that outperform existing techniques in classification tasks and demonstrate robustness and noise reduction.
Contribution
It presents novel probabilistic algorithms for time elastic centroid computation that improve accuracy and robustness over state-of-the-art methods.
Findings
Proposed algorithms outperform DBA in classification error rates.
Centroid-based approaches significantly better than medoid-based.
Second algorithm shows strong noise reduction and robustness.
Abstract
At the light of regularized dynamic time warping kernels, this paper reconsider the concept of time elastic centroid (TEC) for a set of time series. From this perspective, we show first how TEC can easily be addressed as a preimage problem. Unfortunately this preimage problem is ill-posed, may suffer from over-fitting especially for long time series and getting a sub-optimal solution involves heavy computational costs. We then derive two new algorithms based on a probabilistic interpretation of kernel alignment matrices that expresses in terms of probabilistic distributions over sets of alignment paths. The first algorithm is an iterative agglomerative heuristics inspired from the state of the art DTW barycenter averaging (DBA) algorithm proposed specifically for the Dynamic Time Warping measure. The second proposed algorithm achieves a classical averaging of the aligned samples but…
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Taxonomy
MethodsDynamic Time Warping
