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Reastap Large Finetuned Wtq

Developed by Yale-LILY
ReasTAP is a pre-trained model for table reasoning, which injects table reasoning skills through synthetic reasoning examples and is fine-tuned on the WikiTableQuestions dataset
Downloads 66
Release Time : 6/3/2023

Model Overview

ReasTAP is a sequence generation model focused on table reasoning, capable of understanding table structures and performing complex table reasoning tasks such as numerical operations and temporal comparisons

Model Features

Table Reasoning Skill Injection
Injects 7 table reasoning skills during pre-training, including numerical operations and temporal comparisons
Multi-task Adaptability
Performs excellently in multiple downstream tasks such as table question answering, table fact verification, and table-to-text generation
Performance in Low-resource Environments
Maintains good performance even in low-resource environments

Model Capabilities

Table Question Answering
Table Reasoning
Numerical Operations
Temporal Comparisons
Logical Connections

Use Cases

Table Data Processing
Olympic Games Data Query
Query the year when a specific city hosted the Olympic Games from a table containing year and city information
Accurately returns 2008
Business Data Analysis
Analyze numerical relationships and temporal trends in sales data tables
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