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Tapas Tiny Finetuned Wtq

Developed by google
TAPAS is a tiny Transformer model optimized for table question answering tasks, achieving table comprehension capabilities through intermediate pretraining and chained multi-dataset fine-tuning
Downloads 1,894
Release Time : 3/2/2022

Model Overview

This model is a tiny version of TAPAS specifically designed for answering questions based on table content. It learns table representations through masked language modeling and intermediate pretraining, and is fine-tuned on SQA, WikiSQL, and WTQ datasets

Model Features

Relative Position Embedding
Resets position indices for each cell in the table to enhance understanding of table structure
Chained Fine-tuning
Sequentially fine-tuned on SQA, WikiSQL, and WTQ datasets to progressively improve table question answering capabilities
Intermediate Pretraining
Enhances numerical reasoning through synthetic data augmentation to determine if sentences are supported by table content

Model Capabilities

Table content understanding
Table question answering
Numerical reasoning
Cell selection

Use Cases

Intelligent Data Analysis
Spreadsheet Question Answering
Query data in spreadsheets directly using natural language
Achieves 10.39% accuracy on WTQ development set (reset version)
Business Intelligence
Automatic Report Querying
Automatically parse business reports and answer related questions
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