2023
DOI: 10.31219/osf.io/7ujwt
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Text2Time: Transformer-based Article Time Period Prediction

Abstract: The task of predicting the publication period of text documents, such as news articles, is an important but less studied problem in the field of natural language processing. Predicting the year of a news article can be useful in various contexts, such as historical research, sentiment analysis, and media monitoring. In this work, we investigate the problem of predicting the publication period of a text document, specifically a news article, based on its textual content. In order to do so, we created our own ex… Show more

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