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FactNews is the first dataset to predict sentence-level factuality of news reporting. Furthemore, we provide baseline results for sentence-level factuality and media bias predicition in Portuguese. The FactNews is composed of 6,191 annotated sentences by factuality and media bias definitions by AllSides.

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DOI

A Benchmark Dataset for Sentence-Level Factuality and Media Bias Prediction


Automated fact-checking and news credibility verification at scale require accurate prediction of news factuality and media bias. Here, we introduce a large sentence-level dataset, titled FactNews, composed of 6,191 sentences expertly annotated according to factuality and media bias definitions proposed by AllSides. We used the FactNews to assess the overall reliability of news sources by formulating two text classification problems for predicting sentence-level factuality of news reporting and bias of media outlets. Our experiments demonstrate that biased sentences present a higher number of words compared to factual sentences, besides having a predominance of emotions. Hence, the fine-grained analysis of subjectivity and impartiality of news articles showed promising results for predicting the reliability of the entire media outlet. Finally, due to the severity of fake news and political polarization in Brazil, and the lack of research for Portuguese, both dataset and baseline were proposed for Brazilian Portuguese. The following table describes in detail the FactNews labels, documents, and stories:



Factual Quotes Biased Total sentences Total news stories Total news documents
4,242 1,391 558 6,161 100 300


Media 1 Media 2 Media 3
Folha de São Paulo Estadão O Globo


Sentence-Level Media Bias Prediction Sentenve-Level Factuality Prediction
67% (F1-Score) by Fine-tuned mBert-case 88% (F1-Score) by Fine-tuned mBert-case

CITING

Vargas, F., Jaidka, K., Pardo, T.A.S., Benevenuto, F. (2023). Predicting Sentence-Level Factuality of News and Bias of Media Outlets. Proceedings of the 14th International Conference on Recent Advances in Natural Language Processing, pp.1197--1206. Varna, Bulgaria. https://aclanthology.org/2023.ranlp-1.127.


BIBTEX

@inproceedings{vargas-etal-2023-predicting, title = "Predicting Sentence-Level Factuality of News and Bias of Media Outlets", author = "Vargas, Francielle and Jaidka, Kokil and Pardo, Thiago and Benevenuto, Fabr{\'\i}cio", editor = "Mitkov, Ruslan and Angelova, Galia", booktitle = "Proceedings of the 14th International Conference on Recent Advances in Natural Language Processing", month = sep, year = "2023", address = "Varna, Bulgaria", publisher = "INCOMA Ltd., Shoumen, Bulgaria", url = "https://aclanthology.org/2023.ranlp-1.127", pages = "1197--1206", }


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FactNews is the first dataset to predict sentence-level factuality of news reporting. Furthemore, we provide baseline results for sentence-level factuality and media bias predicition in Portuguese. The FactNews is composed of 6,191 annotated sentences by factuality and media bias definitions by AllSides.

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