Adobe Inc.
LEARNING WITH LIMITED SUPERVISION FOR QUESTION-ANSWERING WITH LIGHT-WEIGHT MARKOV MODELS
Last updated:
Abstract:
Methods for natural language semantic matching performed by training and using a Markov Network model are provided. The trained Markov Network model can be used to identify answers to questions. Training may be performed using question-answer pairs that include labels indicating a correct or incorrect answer to a question. The trained Markov Network model can be used to identify answers to questions from sources stored on a database. The Markov Network model provides superior performance over other semantic matching models, in particular, where the training data set includes a different information domain type relative to the input question or the output answer of the trained Markov Network model.
Status:
Application
Type:
Utility
Filling date:
9 Mar 2020
Issue date:
9 Sep 2021