Estimating Personality from Social Media Posts

N. Alsadhan, D. Skillicorn
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引用次数: 15

Abstract

An individual's personality determines the probable repertoire of their reactions to a particular situation. A social robot is much more effective if it is able to learn and so take into account the properties of the humans around it, including personalities. We investigate how well personality can be estimated based on modest amounts of speech or writing, which a social robot might (over)hear. Such a technique also permits humans to be able to infer the personalities of other humans 'at a distance' based on their writing in political, hiring, negotiation, and other relationship settings. We design and implement a technique for predicting personality from small amounts of text, with accuracies comparable to inter-human agreement and substantially better than previous algorithmic approaches (except for a few that use much richer data). The technique works for both of the popular personality typologies, the Big Five and the Myers-Briggs. Because the approach does not require a lexicon, it is language independent. We illustrate using eight different languages, including Arabic.
从社交媒体帖子中估计个性
一个人的性格决定了他在特定情况下可能做出的反应。如果社交机器人能够学习并考虑到周围人类的特性,包括个性,那么它的效率会高得多。我们研究了社交机器人可能会(过度)听到的少量言语或文字,在多大程度上可以估计出一个人的性格。这种技术还允许人类能够根据他人在政治、招聘、谈判和其他关系环境中的写作来推断“远距离”他人的性格。我们设计并实现了一种从少量文本中预测个性的技术,其准确性与人与人之间的协议相当,并且大大优于以前的算法方法(除了少数使用更丰富数据的算法)。这种方法适用于两种流行的人格类型,大五人格和迈尔斯-布里格斯人格。因为这种方法不需要词典,所以它是独立于语言的。我们使用八种不同的语言进行演示,包括阿拉伯语。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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