Fair Isaac Corporation
Explaining machine learning models by tracked behavioral latent features
Last updated:
Abstract:
A system and method to explain model behavior, which can benefit not only those seeking to meet regulatory requirements when using machine learning models but also help guide users of the model to assess and increase robustness associated with model governance processes. The method described utilizes changes in behavior of a time series to identify the latent factors that drive explanation.
Status:
Grant
Type:
Utility
Filling date:
21 Nov 2017
Issue date:
29 Jun 2021