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Autori principali: Bloch, Alexandre, Cohen, Samuel N., Lyons, Terry, Mouterde, Joël, Walker, Benjamin
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.19198
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author Bloch, Alexandre
Cohen, Samuel N.
Lyons, Terry
Mouterde, Joël
Walker, Benjamin
author_facet Bloch, Alexandre
Cohen, Samuel N.
Lyons, Terry
Mouterde, Joël
Walker, Benjamin
contents The signature is a canonical representation of a multidimensional path over an interval. However, it treats all historical information uniformly, offering no intrinsic mechanism for contextualising the relevance of the past. To address this, we introduce the Exponentially Weighted Signature (EWS), generalising the Exponentially Fading Memory (EFM) signature from diagonal to general bounded linear operators. These operators enable cross-channel coupling at the level of temporal weighting together with richer memory dynamics including oscillatory, growth, and regime-dependent behaviour, while preserving the algebraic strengths of the classical signature. We show that the EWS is the unique solution to a linear controlled differential equation on the tensor algebra, and that it generalises both state-space models and the Laplace and Fourier transforms of the path. The group-like structure of the EWS enables efficient computation and makes the framework amenable to gradient-based learning, with the full semigroup action parametrised by and learned through its generator. We use this framework to empirically demonstrate the expressivity gap between the EWS and both the signature and EFM on two SDE-based regression tasks.
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id arxiv_https___arxiv_org_abs_2603_19198
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Exponentially Weighted Signature
Bloch, Alexandre
Cohen, Samuel N.
Lyons, Terry
Mouterde, Joël
Walker, Benjamin
Machine Learning
The signature is a canonical representation of a multidimensional path over an interval. However, it treats all historical information uniformly, offering no intrinsic mechanism for contextualising the relevance of the past. To address this, we introduce the Exponentially Weighted Signature (EWS), generalising the Exponentially Fading Memory (EFM) signature from diagonal to general bounded linear operators. These operators enable cross-channel coupling at the level of temporal weighting together with richer memory dynamics including oscillatory, growth, and regime-dependent behaviour, while preserving the algebraic strengths of the classical signature. We show that the EWS is the unique solution to a linear controlled differential equation on the tensor algebra, and that it generalises both state-space models and the Laplace and Fourier transforms of the path. The group-like structure of the EWS enables efficient computation and makes the framework amenable to gradient-based learning, with the full semigroup action parametrised by and learned through its generator. We use this framework to empirically demonstrate the expressivity gap between the EWS and both the signature and EFM on two SDE-based regression tasks.
title The Exponentially Weighted Signature
topic Machine Learning
url https://arxiv.org/abs/2603.19198