Natural Language Processing for Policymaking

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Abstract

Language is the medium for many political activities, from campaigns to news reports. Natural language processing (NLP) uses computational tools to parse text into key information that is needed for policymaking. In this chapter, we introduce common methods of NLP, including text classification, topic modelling, event extraction, and text scaling. We then overview how these methods can be used for policymaking through four major applications including data collection for evidence-based policymaking, interpretation of political decisions, policy communication, and investigation of policy effects. Finally, we highlight some potential limitations and ethical concerns when using NLP for policymaking.

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APA

Jin, Z., & Mihalcea, R. (2023). Natural Language Processing for Policymaking. In Handbook of Computational Social Science for Policy (pp. 141–162). Springer International Publishing. https://doi.org/10.1007/978-3-031-16624-2_7

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