one
TECHNIQUES TO PERFORM GLOBAL ATTRIBUTION MAPPINGS TO PROVIDE INSIGHTS IN NEURAL NETWORKS

Last updated:

Abstract:

Embodiments include techniques to determine a set of credit risk assessment data samples, generate local credit risk assessment attributions for the set of credit risk assessment samples, and normalize each local credit risk assessment attribution of the local credit risk assessment attributions. Further, embodiments techniques to compare each pair of normalized local credit risk assessment attributions and assign a rank distance thereto proportional to a degree of ranking differences between the pair of normalized local credit risk assessment attributions. The techniques also include applying a K-medoids clustering algorithm to generate clusters of the local risk assessment attributions, generating global attributions, and determining insights for the neural network based on the global attributions.

Status:
Application
Type:

Utility

Filling date:

22 Apr 2020

Issue date:

5 Aug 2021