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Use of Formal Ethical Reviews in NLP Literature: Historical Trends and Current Practices

2021-06-02 12:12:59
Sebastin Santy, Anku Rani, Monojit Choudhury

Abstract

Ethical aspects of research in language technologies have received much attention recently. It is a standard practice to get a study involving human subjects reviewed and approved by a professional ethics committee/board of the institution. How commonly do we see mention of ethical approvals in NLP research? What types of research or aspects of studies are usually subject to such reviews? With the rising concerns and discourse around the ethics of NLP, do we also observe a rise in formal ethical reviews of NLP studies? And, if so, would this imply that there is a heightened awareness of ethical issues that was previously lacking? We aim to address these questions by conducting a detailed quantitative and qualitative analysis of the ACL Anthology, as well as comparing the trends in our field to those of other related disciplines, such as cognitive science, machine learning, data mining, and systems.

Abstract (translated)

URL

https://arxiv.org/abs/2106.01105

PDF

https://arxiv.org/pdf/2106.01105.pdf


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