Analyzing Wikipedia deletion debates with a group decision-making forecast model

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Abstract

In this work we show that machine learning with natural language processing can accurately forecast the outcomes of group decision-making in online discussions. Specifically, we study Articles for Deletion, a Wikipedia forum for determining which content should be included on the site. Applying this model, we replicate several findings from prior work on the factors that predict debate outcomes; we then extend this prior work and present new avenues for study, particularly in the use of policy citation during discussion. Alongside these findings, we introduce a structured corpus and source code for analyzing over 400,000 deletion debates spanning Wikipedia’s history, enabling future large-scale studies of group decision-making discourse.

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APA

Mayfield, E., & Black, A. W. (2019). Analyzing Wikipedia deletion debates with a group decision-making forecast model. Proceedings of the ACM on Human-Computer Interaction, 3(CSCW). https://doi.org/10.1145/3359308

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