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Tapas Base Finetuned Sqa

Developed by google
A table question answering model based on BERT architecture, enhanced with intermediate pretraining for numerical reasoning, fine-tuned on the SQA dataset
Downloads 1,867
Release Time : 3/2/2022

Model Overview

A table parsing model specifically designed for sequential question answering tasks, supporting table data queries in conversational scenarios

Model Features

Relative Position Embedding
Resets position indices for each cell in the table, improving understanding of table structures
Intermediate Pretraining
Enhances numerical reasoning through synthetic data, supporting table content verification tasks
Dual-Objective Pretraining
Combines masked language modeling with table reasoning tasks to learn joint representations of tables and text

Model Capabilities

Table data question answering
Table content verification
Numerical reasoning
Cross-cell relationship understanding

Use Cases

Customer Support
Table Data Query
Query structured table data using natural language
68.74% accuracy on SQA development set (reset position version)
Data Analysis
Automatic Report Generation
Generate data summaries and statistical results based on table content
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