Automatically Finding Actors in Texts: A Performance Review of Multilingual Named Entity Recognition Tools

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Abstract

Named Entity Recognition (NER) is a crucial task in natural language processing and has a wide range of applications in communication science. However, there is a lack of systematic evaluations of available NER tools in the field. In this study, we evaluate the performance of various multilingual NER tools, including rule-based and transformer-based models. We conducted experiments on corpora containing texts in multiple languages and evaluated the F1-score, speed, and features of each tool. Our results show that transformer-based language models outperform rule-based models and other NER tools in most languages. However, we found that the performance of the transformer-based models varies depending on the language and the corpus. Our study provides insights into the strengths and weaknesses of NER tools and their suitability for specific languages, which can inform the selection of appropriate tools for future studies and applications in communication science.

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Balluff, P., Boomgaarden, H. G., & Waldherr, A. (2024). Automatically Finding Actors in Texts: A Performance Review of Multilingual Named Entity Recognition Tools. Communication Methods and Measures, 18(4), 371–389. https://doi.org/10.1080/19312458.2024.2324789

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