Paper ID: 2310.10836
Gaussian processes based data augmentation and expected signature for time series classification
Marco Romito, Francesco Triggiano
The signature is a fundamental object that describes paths (that is, continuous functions from an interval to a Euclidean space). Likewise, the expected signature provides a statistical description of the law of stochastic processes. We propose a feature extraction model for time series built upon the expected signature. This is computed through a Gaussian processes based data augmentation. One of the main features is that an optimal feature extraction is learnt through the supervised task that uses the model.
Submitted: Oct 16, 2023