SAP SE
IDENTIFYING ENTITIES ABSENT FROM TRAINING DATA USING NEURAL NETWORKS
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Abstract:
Methods, systems, and computer-readable storage media for a machine learning (ML) model and framework for training of the ML model to enable the ML model to correctly match entities even in instances where new entities are added after the ML model has been trained. More particularly, implementations of the present disclosure are directed to a ML model provided as a neural network that is trained to provide a scalar confidence score that indicates whether two entities in a pair of entities are considered a match, even if an entity in the set of entities was not accounted for in training of the ML model.
Status:
Application
Type:
Utility
Filling date:
10 Mar 2020
Issue date:
16 Sep 2021