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Reastap Large Finetuned Wikisql

Developed by Yale-LILY
ReasTAP is a table reasoning-based pretrained model that injects table reasoning skills through synthetic reasoning examples and is fine-tuned on the WikiSQL dataset.
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Release Time : 6/3/2023

Model Overview

ReasTAP is a sequence generation model focused on table reasoning, capable of understanding and processing tabular data to perform complex table reasoning tasks.

Model Features

Table Reasoning Skill Injection
Injects 7 table reasoning skills during pretraining, such as numerical operations, temporal comparisons, and logical connections.
Outstanding Multi-task Performance
Achieves state-of-the-art performance on multiple downstream tasks, including table QA, table fact verification, and table-to-text generation.
Strong Adaptation to Low-resource Environments
Significantly outperforms other models in low-resource settings.

Model Capabilities

Table Data Understanding
Table QA
Table Reasoning
Numerical Operations
Temporal Comparisons
Logical Connections

Use Cases

Data Query & Analysis
Table QA
Answer natural language questions from structured tables
Performs excellently on WikiSQL-Weak and WikiTQ benchmarks
Data Verification
Table Fact Verification
Verify factual statements in tabular data
Achieves state-of-the-art performance on the TabFact benchmark
Data Presentation
Table-to-Text Generation
Generate natural language descriptions from tabular data
Performs excellently on the LogicNLG benchmark
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