#ContextMatters: Advantages and Limitations of Using Machine Learning to Support Women in Politics
Jacqueline Comer, Sam Work, Kory W Mathewson, Lana Cuthbertson, Kasey, Machin

TL;DR
This paper evaluates ParityBOT, a natural language processing tool deployed during elections in three countries, to analyze and counter online toxicity against women in politics, highlighting its benefits and current limitations.
Contribution
The paper introduces ParityBOT, the first NLP-based intervention aimed at reducing online toxicity towards women in politics and discusses its deployment and challenges across multiple countries.
Findings
ParityBOT analyzed over 12 million tweets targeting women candidates.
The system missed obvious insults, indicating false negatives.
Microaggressions have unaddressed harms impacting women and gender equality.
Abstract
The United Nations identified gender equality as a Sustainable Development Goal in 2015, recognizing the underrepresentation of women in politics as a specific barrier to achieving gender equality. Political systems around the world experience gender inequality across all levels of elected government as fewer women run for office than men. This is due in part to online abuse, particularly on social media platforms like Twitter, where women seeking or in power tend to be targeted with more toxic maltreatment than their male counterparts. In this paper, we present reflections on ParityBOT - the first natural language processing-based intervention designed to affect online discourse for women in politics for the better, at scale. Deployed across elections in Canada, the United States and New Zealand, ParityBOT was used to analyse and classify more than 12 million tweets directed at women…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection
