Learning with Expected Signatures: Theory and Applications

Learning with Expected Signatures: Theory and Applications










arXiv:2505.20465v1 Announce Type: new
Abstract: The expected signature maps a collection of data streams to a lower dimensional representation, with a remarkable property: the resulting feature tensor can fully characterize the data generating distribution. This “model-free” embedding has been successfully leveraged to build multiple domain-agnostic machine learning (ML) algorithms for time series and sequential data. The convergence results proved in this paper bridge the gap between the expected signature’s empirical discrete-time estimator and its theoretical continuous-time value, allowing for a more complete probabilistic interpretation of expected signature-based ML methods. Moreover, when the data generating process is a martingale, we suggest a simple modification of the expected signature estimator with significantly lower mean squared error and empirically demonstrate how it can be effectively applied to improve predictive performance.






Lorenzo Lucchese, Mikko S. Pakkanen, Almut E. D. Veraart





Go to original source





Posted

in

, , , ,

by