Functional linear regression with truncated signatures
Methodology
2022-06-17 v4
Abstract
We place ourselves in a functional regression setting and propose a novel methodology for regressing a real output on vector-valued functional covariates. This methodology is based on the notion of signature, which is a representation of a function as an infinite series of its iterated integrals. The signature depends crucially on a truncation parameter for which an estimator is provided, together with theoretical guarantees. An empirical study on both simulated and real-world datasets shows that the resulting methodology is competitive with traditional functional linear models, in particular when the functional covariates take their values in a high dimensional space.
Cite
@article{arxiv.2006.08442,
title = {Functional linear regression with truncated signatures},
author = {Adeline Fermanian},
journal= {arXiv preprint arXiv:2006.08442},
year = {2022}
}