A Stochastic Process Model for Time Warping Functions
Yijia Ma, Xinyu Zhou, Wei Wu

TL;DR
This paper introduces a novel stochastic process model for time warping functions that provides a linear, generative, and statistically inferential framework for phase variability in functional data, addressing non-linearity challenges.
Contribution
It develops a linear, inner-product based model for time warping functions, enabling generative modeling and statistical inference in a non-linear warping space.
Findings
Effective Bayesian registration with the new prior.
Successful application to Berkeley growth data.
Enhanced modeling and classification performance.
Abstract
Time warping function provides a mathematical representation to measure phase variability in functional data. Recent studies have developed various approaches to estimate optimal warping between functions and provide non-Euclidean models. However, a principled, linear, generative model on time warping functions is still under-explored. This is a highly challenging problem because the space of warping functions is non-linear with the conventional Euclidean metric. To address this problem, we propose a stochastic process model for time warping functions, where the key is to define a linear, inner-product structure on the time warping space and then transform the warping functions into a sub-space of the Euclidean space. With certain constraints on the warping functions, this transformation is an isometric isomorphism. In the transformed space, we adopt the …
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Taxonomy
TopicsTime Series Analysis and Forecasting · Neural Networks and Applications · Bayesian Methods and Mixture Models
