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Finding Optimists and Pessimists on Twitter

机译:在Twitter上找到乐观主义者和悲观主义者

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摘要

Optimism is linked to various personality factors as well as both psychological and physical health, but how does it relate to the way a person tweets? We analyze the online activity of a set of Twitter users in order to determine how well machine learning algorithms can detect a person's outlook on life by reading their tweets. A sample of tweets from each user is manually annotated in order to establish ground truth labels, and classifiers are trained to distinguish between optimistic and pessimistic users. Our results suggest that the words in people's tweets provide ample evidence to identify them as optimists, pessimists, or somewhere in between. Additionally, several applications of these trained models are explored.
机译:乐观与各种人格因素以及心理和身体健康有关,但它与人发推文的方式有何关系?我们分析了一组Twitter用户的在线活动,以确定机器学习算法通过阅读他们的推文来检测一个人的生活状况的能力。手动注释来自每个用户的推文样本,以建立基本事实标签,并训练分类器以区分乐观用户和悲观用户。我们的结果表明,人们推文中的词语提供了充分的证据,可以将他们标识为乐观主义者,悲观主义者或介于两者之间。此外,还探讨了这些训练模型的几种应用。

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