Fair Isaac Corporation
Fast automatic explanation of scored observations
Last updated:
Abstract:
Systems and methods for generating concise explanations of scored observations that strike good, and computationally efficient, trade-offs between rank-ordering performance and explainability of scored observations are disclosed. The systems and methods described herein for explaining scored observations are based on a framework of partial dependence functions (PDFs), multi-layered neural networks (MNNs), and Latent Explanations Neural Network Scoring (LENNS).
Status:
Grant
Type:
Utility
Filling date:
2 Dec 2016
Issue date:
22 Jun 2021