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Bio
Maria Glenski is a Data Scientist in the Data Science and Analytics Group in the National Security Directorate. Her research focuses on computational social science approaches to model, characterize, and explain complex behavior in diverse online social environments and the impacts of biases in machine learning/artificial intelligence models, particularly for deception detection. Dr. Glenski’s research has been published in top tier venues including WWW, ACL, ACM TIST, and CSCW and interdisciplinary venues such as the Comparative Approaches to Disinformation workshop at Harvard University in 2019. She has co-organized a tutorial on measuring information spread within and across social platforms at the AAAI international conference on the web and social media (ICWSM) and contributed a chapter to the 2020 Springer book on Disinformation, Misinformation, and Fake News in Social Media – Emerging Research Challenges and Opportunities. She regularly serves on the program committee of several international conferences, including as an area chair for the Women in Machine Learning workshop, and has been recognized as an outstanding reviewer (ICWSM 2019).
Research Interests
Papers共 32 篇Author StatisticsCo-AuthorSimilar Experts
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17TH CONFERENCE OF THE EUROPEAN CHAPTER OF THE ASSOCIATION FOR COMPUTATIONAL LINGUISTICS, EACL 2023 (2023): 1107-1119
Maria Glenski,Ellyn Ayton, Sannisth Soni,Emily Saldanha,Dustin Arendt,Brian Quiter, Ren Cooper,Svitlana Volkova
PROCEEDINGS OF WORKSHOP ON CHALLENGES & PERSPECTIVES IN CREATING LARGE LANGUAGE MODELS (BIGSCIENCE EPISODE #5) (2022): 160-172
CoRR (2022)
arXiv (Cornell University) (2021)
Joseph Cottam,Maria Glenski, Zhuanyi Huang Shaw,Ryan Rabello, Austin Golding,Svitlana Volkova,Dustin Arendt
semanticscholar(2021)
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