International Business Machines Corporation
Automatic correction of indirect bias in machine learning models

Last updated:

Abstract:

Systems and methods for detecting indirect bias in machine learning models are provided. A computer-implemented method includes: receiving, by a computer device, a user request to detect transitive bias in a machine learning model; determining, by the computer device, correlations of attributes of neighboring data not included in a dataset of the machine learning model; ranking, by the computer device, the attributes based on the determined correlations; and returning, by the computer device, a list of the ranked attributes to a user that generated the user request.

Status:
Grant
Type:

Utility

Filling date:

31 Oct 2018

Issue date:

20 Jul 2021