Oracle Corporation
EFFICIENT AND SCALABLE COMPUTATION OF GLOBAL FEATURE IMPORTANCE EXPLANATIONS
Last updated:
Abstract:
End-to-end explanation techniques, which efficiently explain the behavior (feature importance) of any machine learning model on large tabular datasets, are disclosed. These techniques comprise two down-sampling methods to efficiently select a small set of representative samples of a high-dimensional dataset for explaining a machine learning model by making use of the characteristics of the dataset or of an explainer of a machine learning model to optimize the explanation quality. These techniques significantly improve the explanation speed while maintaining the explanation quality of a full dataset evaluation.
Status:
Application
Type:
Utility
Filling date:
30 Nov 2020
Issue date:
2 Jun 2022