license: apache-2.0
task_categories:
- text-classification
- text-generation
language:
- en
tags:
- finance
pretty_name: FinFact
size_categories:
- 1K<n<10K
Fin-Fact - Financial Fact-Checking Dataset
Table of Contents
- Overview
- Dataset Description
- Dataset Usage
- Leaderboard
- Dependencies
- Run models for paper metrics
- Citation
- Contribution
- License
- Contact
Overview
Welcome to the Fin-Fact repository! Fin-Fact is a comprehensive dataset designed specifically for financial fact-checking and explanation generation. This README provides an overview of the dataset, how to use it, and other relevant information. Click here to access the paper.
Dataset Description
- Name: Fin-Fact
- Purpose: Fact-checking and explanation generation in the financial domain.
- Labels: The dataset includes various labels, including Claim, Author, Posted Date, Sci-digest, Justification, Evidence, Evidence href, Image href, Image Caption, Visualisation Bias Label, Issues, and Claim Label.
- Size: The dataset consists of 3121 claims spanning multiple financial sectors.
- Additional Features: The dataset goes beyond textual claims and incorporates visual elements, including images and their captions.
Dataset Usage
Fin-Fact is a valuable resource for researchers, data scientists, and fact-checkers in the financial domain. Here's how you can use it:
Download the Dataset: You can download the Fin-Fact dataset here.
Exploratory Data Analysis: Perform exploratory data analysis to understand the dataset's structure, distribution, and any potential biases.
Natural Language Processing (NLP) Tasks: Utilize the dataset for various NLP tasks such as fact-checking, claim verification, and explanation generation.
Fact Checking Experiments: Train and evaluate machine learning models, including text and image analysis, using the dataset to enhance the accuracy of fact-checking systems.
Leaderboard
Dependencies
We recommend you create an anaconda environment:
conda create --name finfact python=3.6 conda-build
Then, install Python requirements:
pip install -r requirements.txt
Run models for paper metrics
We provide scripts let you easily run our dataset on existing state-of-the-art models and re-create the metrics published in paper. You should be able to reproduce our results from the paper by following these instructions. Please post an issue if you're unable to do this. To run existing ANLI models for fact checking.
Run:
- BART
python anli.py --model_name 'ynie/bart-large-snli_mnli_fever_anli_R1_R2_R3-nli' --data_file finfact.json --threshold 0.5
- RoBERTa
python anli.py --model_name 'ynie/roberta-large-snli_mnli_fever_anli_R1_R2_R3-nli' --data_file finfact.json --threshold 0.5
- ELECTRA
python anli.py --model_name 'ynie/electra-large-discriminator-snli_mnli_fever_anli_R1_R2_R3-nli' --data_file finfact.json --threshold 0.5
- AlBERT
python anli.py --model_name 'ynie/albert-xxlarge-v2-snli_mnli_fever_anli_R1_R2_R3-nli' --data_file finfact.json --threshold 0.5
- XLNET
python anli.py --model_name 'ynie/xlnet-large-cased-snli_mnli_fever_anli_R1_R2_R3-nli' --data_file finfact.json --threshold 0.5
- GPT-2
python gpt2_nli.py --model_name 'fractalego/fact-checking' --data_file finfact.json
Citation
@misc{rangapur2023finfact,
title={Fin-Fact: A Benchmark Dataset for Multimodal Financial Fact Checking and Explanation Generation},
author={Aman Rangapur and Haoran Wang and Kai Shu},
year={2023},
eprint={2309.08793},
archivePrefix={arXiv},
primaryClass={cs.AI}
}
Contribution
We welcome contributions from the community to help improve Fin-Fact. If you have suggestions, bug reports, or want to contribute code or data, please check our CONTRIBUTING.md file for guidelines.
License
Fin-Fact is released under the MIT License. Please review the license before using the dataset.
Contact
For questions, feedback, or inquiries related to Fin-Fact, please contact arangapur@hawk.iit.edu
.
We hope you find Fin-Fact valuable for your research and fact-checking endeavors. Happy fact-checking!