Using Machine Learning to Enhance Archival Processing of Social Media Archives

Bibliographische Detailangaben

Titel
Using Machine Learning to Enhance Archival Processing of Social Media Archives
verantwortlich
Anne Gilliland; Zhanyuan Yin; Huizi Yu; Lizhou Fan
Erscheinungsjahr
2020
Medientyp
Preprint
Datenquelle
LISSA
sid-179-col-lissa
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Zusammenfassung
This paper reports on a study using machine learning to identify incidences and shifting dynamics of hate speech in social media archives. To better cope with the archival processing need for such large scale and fast evolving archives, we propose the Data-driven and Circulating Archival Processing (DCAP) method. As a proof-of-concept, our study focuses on an English language Twitter archive relating to COVID-19: tweets were repeatedly scraped between February and June 2020, ingested and aggregated within the COVID-19 Hate Speech Twitter Archive (CHSTA) and analyzed for hate speech using the Generative Adversarial Network (GAN)-inspired DCAP Method. Outcomes suggest that it is possible to use machine learning and data analytics to surface and substantiate trends from CHSTA and similar social media archives that could provide immediately useful knowledge for crisis response, in controversial situations, or for public policy development, as well as for subsequent historical analysis. The approach shows potential for integrating multiple aspects of the archival workflow, and supporting automatic iterative redescription and reappraisal activities in ways that make them more accountable and more rapidly responsive to changing societal interests and unfolding developments.
Sprache
Englisch
DOI
10.31229/OSF.IO/GKYDM