Royal Bank of Canada
SYSTEM AND METHOD FOR TESTING MACHINE LEARNING

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Abstract:

A machine learning failure discriminator machine is described, along with corresponding systems, methods, and non-transitory computer readable media. The approach operates in relation to an iterative machine learning model and includes a phased approach to extract p-values from the iterative machine learning model based on modified versions of the training or validation data sets. The p-values are then used to identify whether various null hypotheses can be rejected, and accordingly, to generate an output data structure indicative of an estimated failure reason, if any. The output data structure may be made available on an API or on a graphical user interface.

Status:
Application
Type:

Utility

Filling date:

9 Apr 2021

Issue date:

14 Oct 2021