Royal Bank of Canada
SYSTEM AND METHOD FOR CASCADING DECISION TREES FOR EXPLAINABLE REINFORCEMENT LEARNING

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Abstract:

The approaches described herein are adapted to provide a technical, computational mechanism to aid in improving explainability of machine learning architectures or for generating more explainable machine learning architectures. Specifically, the approaches describe a proposed implementation of cascading decision tree (CDT) based representation learning data models which can be structured in various approaches to learn features of varying complexity.

Status:
Application
Type:

Utility

Filling date:

19 Aug 2021

Issue date:

24 Feb 2022