Sentiment analysis of player chat messaging in the video game StarCraft 2: Extending a lexicon-based model
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摘要
There is a growing need for automated tools which make predictions about the positivity or negativity of sentiment conveyed by text. Such tools have a number of important applications in game user research. They are useful for understanding users generally, as they may give Big Data researchers access to a new source of information about player learning environments. Sentiment analysis methods are also applicable to the detection of toxicity, and the identification of players or player messages that are a potential threat to the player experience. A major challenge in sentiment analysis, however, is developing portable models that can be applied to new domains with relatively little effort. In the present study we extend a lexicon-based sentiment extractor, SO-CAL, to the analysis of instant messages across 1000 games of StarCraft 2. We show that, with updates to dictionary entries that are tailored to the classification task at hand, SO-CAL constitutes a respectable classifier of sentiment and toxicity that is robust across differences in player region and league. We verify the performance of our toxicity detector against a sample of 2025 additional games. Our results support the proposal that lexicon-based sentiment extraction is a useful and portable method of sentiment analysis, and that it can be deployed to identify toxicity.
论文关键词:Sentiment analysis,Video game chat,Instant messaging,Toxicity
论文评审过程:Received 22 December 2016, Revised 11 September 2017, Accepted 16 September 2017, Available online 28 September 2017, Version of Record 18 October 2017.
论文官网地址:https://doi.org/10.1016/j.knosys.2017.09.022