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Tapas Mini Finetuned Sqa

Developed by google
The TAPAS mini model is a table question answering model that underwent intermediate pretraining and fine-tuning on the SQA dataset, utilizing relative position embedding technology.
Downloads 24
Release Time : 3/2/2022

Model Overview

This model is specifically designed for table question answering tasks in conversational scenarios. It was pretrained in a self-supervised manner on Wikipedia table data and fine-tuned on the SQA dataset.

Model Features

Intermediate Pretraining
Enhances numerical reasoning capabilities in tables through synthetic data augmentation.
Relative Position Embedding
Resets position indices for each cell in the table to improve positional awareness.
Weakly Supervised Learning
Utilizes large-scale unlabeled table data for self-supervised pretraining.

Model Capabilities

Table Question Answering
Table Content Understanding
Numerical Reasoning

Use Cases

Intelligent Customer Service
Table Data Query
Answers natural language questions from users about table data.
Achieved 51.48% accuracy on the SQA development set.
Data Analysis
Table Information Extraction
Extracts and summarizes information from structured tables.
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