T

Tapas Small Finetuned Sqa

Developed by google
This model is a small version of TAPAS, which has undergone intermediate pre-training and fine-tuning on the SQA dataset. It is suitable for table question answering tasks in dialogue scenarios.
Downloads 759
Release Time : 3/2/2022

Model Overview

TAPAS is a BERT-like Transformer model pre-trained on English Wikipedia tables and associated texts in a self-supervised manner, specifically designed for table question answering tasks.

Model Features

Intermediate Pre-training
Enhanced the table numerical reasoning ability through synthetic data, improving the model's ability to support/refute judgments on table content.
Relative Position Embedding
Adopted the relative position embedding method of resetting table cell position indices, improving the model's performance on the SQA task.
Cell Selection Head
The cell selection head added during fine-tuning enables the model to accurately select relevant cells in the table to answer questions.

Model Capabilities

Table Question Answering
Conversational Question Answering
Table Content Understanding

Use Cases

Dialogue System
Table Data Question Answering
Answer users' consecutive questions about table data in a dialogue system.
Achieved an accuracy of 61.55% on the SQA development set (reset position version)
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase