Fair Isaac Corporation
MANAGING MISSING VALUES IN DATASETS FOR MACHINE LEARNING MODELS

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Abstract:

Computer-implemented machines, systems and methods for managing missing values in a dataset for a machine learning model. The method may comprise importing a dataset with missing values; computing data statistics and identifying the missing values; verifying the missing values; updating the missing values; imputing missing values; encoding reasons for why values are missing; combining imputed missing values and the encoded reasons; and recommending models and hyperparameters to handle special or missing values.

Status:
Application
Type:

Utility

Filling date:

10 Feb 2020

Issue date:

18 Feb 2021