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Twitch Plays Pokemon, Machine Learns Twitch: Unsupervised Context-Aware Anomaly Detection for Identifying Trolls in Streaming Data

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arxiv 1902.06208 v1 pith:ODU5H54B submitted 2019-02-17 cs.CL cs.SI

Twitch Plays Pokemon, Machine Learns Twitch: Unsupervised Context-Aware Anomaly Detection for Identifying Trolls in Streaming Data

classification cs.CL cs.SI
keywords trollsidentifyinguseranomalydatahumaninternettwitch
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the increasing importance of online communities, discussion forums, and customer reviews, Internet "trolls" have proliferated thereby making it difficult for information seekers to find relevant and correct information. In this paper, we consider the problem of detecting and identifying Internet trolls, almost all of which are human agents. Identifying a human agent among a human population presents significant challenges compared to detecting automated spam or computerized robots. To learn a troll's behavior, we use contextual anomaly detection to profile each chat user. Using clustering and distance-based methods, we use contextual data such as the group's current goal, the current time, and the username to classify each point as an anomaly. A user whose features significantly differ from the norm will be classified as a troll. We collected 38 million data points from the viral Internet fad, Twitch Plays Pokemon. Using clustering and distance-based methods, we develop heuristics for identifying trolls. Using MapReduce techniques for preprocessing and user profiling, we are able to classify trolls based on 10 features extracted from a user's lifetime history.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. E-Sports Talent Scouting Based on Multimodal Twitch Stream Data

    cs.LG 2019-07 unverdicted novelty 6.0

    Neural features from Twitch streams are pooled via hierarchical Bayesian model to estimate CS:GO gamer intrinsic skill, validated by correlation with subsequent public ranks.