Extracting and classifying exceptional COVID‐19 measures from multilingual legal texts: The merits and limitations of automated approaches

Author:

Egger Clara1ORCID,Caselli Tommaso2,Tziafas Georgios2,Phalle Eugénie de Saint3,Vries Wietse de2

Affiliation:

1. Department of Public Administration and Sociology Erasmus School of Social and Behavioural Sciences, Erasmus University Rotterdam Rotterdam The Netherlands

2. Center for Language and Cognition (CLGC), Faculty of Arts University of Groningen Groningen The Netherlands

3. International Relations and International Organization, Faculty of Arts University of Groningen Groningen The Netherlands

Abstract

AbstractThis paper contributes to ongoing scholarly debates on the merits and limitations of computational legal text analysis by reflecting on the results of a research project documenting exceptional COVID‐19 management measures in Europe. The variety of exceptional measures adopted in countries characterized by different legal systems and natural languages, as well as the rapid evolution of such measures, pose considerable challenges to manual textual analysis methods traditionally used in the social sciences. To address these challenges, we develop a supervised classifier to support the manual coding of exceptional policies by a multinational team of human coders. After presenting the results of various natural language processing (NLP) experiments, we show that human‐in‐the‐loop approaches to computational text analysis outperform unsupervised approaches in accurately extracting policy events from legal texts. We draw lessons from our experience to ensure the successful integration of NLP methods into social science research agendas.

Funder

ZonMw

Publisher

Wiley

Subject

Law,Public Administration,Sociology and Political Science

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Rules as data;Regulation & Governance;2024-02-14

2. A Comparative Journey into COVID-19 Policies in Europe;International Series on Public Policy;2024

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