Invention Grant
- Patent Title: Systems and methods for training language models to reason over tables
-
Application No.: US17215465Application Date: 2021-03-29
-
Publication No.: US11868381B2Publication Date: 2024-01-09
- Inventor: Thomas Müller , Jonathan Herzig , Pawel Nowak , Julian Eisenschlos , Francesco Piccinno , Syrine Krichene
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: Google LLC
- Current Assignee: Google LLC
- Current Assignee Address: US CA Mountain View
- Agency: Botus Churchill IP Law LLP
- Main IPC: G06F16/332
- IPC: G06F16/332 ; G06N3/08 ; G06F40/20 ; G06F40/284 ; G06F40/35

Abstract:
Systems and methods for pre-training and fine-tuning of neural-network-based language models to reason directly over tables without generating logical forms. In some examples, a language model can be pre-trained using masked-language modeling tasks synthetically generated from tables pulled from a knowledge corpus. In some examples, the language model may be further pre-trained using pairs of counterfactual statements generated from those tables, and/or one or more statements that compare selected data from those tables. The language model may then be fine-tuned using examples that include only a question, an answer, and a table, allowing fine-tuning examples to be harvested directly from existing benchmark datasets or synthetically generated.
Public/Granted literature
- US20220309087A1 SYSTEMS AND METHODS FOR TRAINING LANGUAGE MODELS TO REASON OVER TABLES Public/Granted day:2022-09-29
Information query