Classify and extract text 10x better and faster 🦾


➡️  Learn more

Fact Extraction and Verfication (FEVER) Dataset

Created by Thorne et al. at 2018, the Fact Extraction and Verfication (FEVER) Dataset contains 185,445 claims generated by altering sentences extracted from Wikipedia and subsequently verified without knowledge of the sentence they were derived from. The claims are classified as supported, rufted or notenoughinfo., in English language. Containing 185,445 in JSON file format.

Dataset Sources

Here you can download the Fact Extraction and Verfication (FEVER) dataset in JSON format.

Download Fact Extraction and Verfication (FEVER) dataset JSON files

Fine-tune with Fact Extraction and Verfication (FEVER) dataset

Metatext is a powerful no-code tool for train, tune and integrate custom NLP models

➡️  Learn more

Paper

Read full original Fact Extraction and Verfication (FEVER) paper.

Download PDF paper


Classify and extract text 10x better and faster 🦾

Metatext helps you to classify and extract information from text and documents with customized language models with your data and expertise.