Inferring personality of online gamers by fusing multiple-view predictions

UMAP'12: Proceedings of the 20th international conference on User Modeling, Adaptation, and Personalization(2012)

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摘要
Reliable personality prediction can have direct impact on many adaptive systems, such as targeted advertising, interface personalization and content customization. We propose an algorithm to infer a user's personality profile more reliably by fusing analytical predictions from multiple sources including behavioral traces, textual data, and social networking information. We applied and validated our approach using a real data set obtained from 1,040 World of Warcraft players. Besides behavioral and social networking information, we found that text analysis of character names yields the strongest personality cues.
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关键词
online gamers,character names yield,adaptive system,reliable personality prediction,social networking information,strongest personality cue,inferring personality,textual data,behavioral trace,personality profile,fusing multiple-view prediction,warcraft player,sentiment analysis,text analysis,social network,behavior analysis,virtual worlds,social networks,personality
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