Diffeomorphic Transformations for Time Series Analysis: An Efficient Approach to Nonlinear Warping
I\~nigo Martinez

TL;DR
This paper introduces a novel, differentiable diffeomorphic warping method for time series analysis that improves similarity measurement, classification, and clustering by overcoming the limitations of traditional elastic metrics like DTW.
Contribution
It develops a differentiable, invertible warping approach with a closed-form gradient, enabling efficient deep learning applications for time series alignment, classification, and clustering.
Findings
Enhanced time series alignment and averaging using the proposed method.
High-accuracy deep learning classification model for time series.
Scalable, warping-invariant clustering algorithm.
Abstract
The proliferation and ubiquity of temporal data across many disciplines has sparked interest for similarity, classification and clustering methods specifically designed to handle time series data. A core issue when dealing with time series is determining their pairwise similarity, i.e., the degree to which a given time series resembles another. Traditional distance measures such as the Euclidean are not well-suited due to the time-dependent nature of the data. Elastic metrics such as dynamic time warping (DTW) offer a promising approach, but are limited by their computational complexity, non-differentiability and sensitivity to noise and outliers. This thesis proposes novel elastic alignment methods that use parametric \& diffeomorphic warping transformations as a means of overcoming the shortcomings of DTW-based metrics. The proposed method is differentiable \& invertible, well-suited…
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Taxonomy
MethodsALIGN
