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Riveter: Measuring Power and Social Dynamics Between Entities

Annual Meeting of the Association for Computational Linguistics (ACL), 2023
15 December 2023
Maria Antoniak
Anjalie Field
Kumail Alhamoud
Melanie Walsh
Lauren F. Klein
Maarten Sap
ArXiv (abs)PDFHTML
Abstract

Riveter provides a complete easy-to-use pipeline for analyzing verb connotations associated with entities in text corpora. We prepopulate the package with connotation frames of sentiment, power, and agency, which have demonstrated usefulness for capturing social phenomena, such as gender bias, in a broad range of corpora. For decades, lexical frameworks have been foundational tools in computational social science, digital humanities, and natural language processing, facilitating multifaceted analysis of text corpora. But working with verb-centric lexica specifically requires natural language processing skills, reducing their accessibility to other researchers. By organizing the language processing pipeline, providing complete lexicon scores and visualizations for all entities in a corpus, and providing functionality for users to target specific research questions, Riveter greatly improves the accessibility of verb lexica and can facilitate a broad range of future research.

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