Linear functional regression with truncated signatures

15 Jun 2020Adeline Fermanian

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... (read more)

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