Look! Who's Talking?: Projection of Extraversion Across Different Social Contexts

WCPR '14 Pub Date : 2014-11-07 DOI:10.1145/2659522.2659530
Scott Nowson, Alastair J. Gill
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引用次数: 21

Abstract

Automatic classification of personality from language depends upon large quantities of relevant training data, which raises two potential problems. First, collecting personality information from the author or speaker can be invasive and expensive, especially in sensitive contexts. Second, issues of context or genre can reduce the usefulness of available training resources for broader personality classification. One approach to dealing with the first issue is to use external judges rather than the text's author. In this paper, we test the extent to which these personality perceptions are useful for training a classifier between different linguistic genres. Following disappointing cross-training results, we explore the projection of personality through specific linguistic factors. We find that while some differences are between the genres overall, some indicate that indeed personality is evidenced differently across situations. It is clear that care is needed leveraging resources from different domains for computational personality recognition.
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看!谁说的?外向性在不同社会背景下的投射
从语言中自动分类人格依赖于大量的相关训练数据,这带来了两个潜在的问题。首先,从作者或说话者那里收集个性信息可能是侵入性的和昂贵的,特别是在敏感的语境中。其次,上下文或类型的问题会降低现有训练资源对更广泛的人格分类的有用性。处理第一个问题的一种方法是使用外部法官而不是文本作者。在本文中,我们测试了这些人格感知在多大程度上有助于训练不同语言类型之间的分类器。在交叉训练结果令人失望之后,我们通过特定的语言因素来探索人格的投射。我们发现,虽然不同类型之间存在一些差异,但也有一些表明,在不同的情况下,个性的表现确实是不同的。很明显,需要注意利用来自不同领域的资源进行计算人格识别。
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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Predicting Personality Traits using Multimodal Information Evaluating Content-Independent Features for Personality Recognition Look! Who's Talking?: Projection of Extraversion Across Different Social Contexts The Impact of Affective Verbal Content on Predicting Personality Impressions in YouTube Videos A Multivariate Regression Approach to Personality Impression Recognition of Vloggers
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