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Tapas Base Finetuned Wtq

Developed by google
TAPAS is a Transformer-based table question answering model, pre-trained on Wikipedia table data through self-supervised learning and fine-tuned on datasets like WTQ.
Downloads 23.03k
Release Time : 3/2/2022

Model Overview

This model is specifically designed for answering questions based on table content, supporting information extraction from structured tables and numerical reasoning.

Model Features

Table-aware Pre-training
Specialized learning of table structures and numerical relationships through masked language modeling and intermediate pre-training stages
Multi-task Fine-tuning
Joint fine-tuning on three datasets (SQA, WikiSQL, and WTQ) to enhance generalization capabilities
Relative Position Embedding
Adopts a table cell position reset mechanism to better handle table structures

Model Capabilities

Table content understanding
Table question answering
Numerical reasoning
Cell selection
Aggregation calculation

Use Cases

Business Intelligence
Financial Statement Analysis
Automatically answering queries about financial statement data
Achieved 46.38% accuracy on the WTQ dataset
Data Query
Structured Data Retrieval
Querying table databases using natural language
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