International Business Machines Corporation
VECTOR EMBEDDING MODELS FOR RELATIONAL TABLES WITH NULL OR EQUIVALENT VALUES
Last updated:
Abstract:
Structured and semi-structured databases and files are processed using natural language processing techniques to impute data for null value tokens in database records from other records that have non-null values for the same attributes. Vector embedding techniques are used, including, in some cases, appropriately tagging null value tokens to reduce or eliminate their undue impact on semantic vectors generating using a neural network.
Status:
Application
Type:
Utility
Filling date:
20 Mar 2020
Issue date:
23 Sep 2021