A Multivariate Regression Approach to Personality Impression Recognition of Vloggers

WCPR '14 Pub Date : 2014-11-07 DOI:10.1145/2659522.2659526
G. Farnadi, Shanu Sushmita, Geetha Sitaraman, Nhat Ton, M. D. Cock, S. Davalos
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引用次数: 32

Abstract

Research in psychology has suggested that behavior of individuals can be explained to a great extent by their underlying personality traits. In this paper, we focus on predicting how the personality of YouTube video bloggers is perceived by their viewers. Our approach to personality recognition is multimodal in the sense that we use audio-video features, as well as textual (emotional and linguistic) features extracted from the transcripts of vlogs. Based on these features, we predict the extent to which the video blogger is perceived to exhibit each of the traits of the Big Five personality model. In addition, we explore 5 multivariate regression techniques and contrast them with a single target approach for predicting personality impression scores. All 6 algorithms are able to outperform the average baseline model for all 5 personality traits on a dataset of 404 YouTube videos. This is interesting because previously published methods for the same dataset show an improvement over the baseline for the majority of personality traits, but not for all simultaneously.
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视频博主人格印象识别的多元回归方法
心理学研究表明,个人的行为在很大程度上可以用他们潜在的人格特征来解释。在本文中,我们专注于预测YouTube视频博主的个性是如何被他们的观众感知的。我们的人格识别方法是多模态的,因为我们使用音频-视频特征,以及从视频日志文本中提取的文本(情感和语言)特征。基于这些特征,我们预测视频博主被认为表现出五大人格模型的每一个特征的程度。此外,我们探索了5种多元回归技术,并将它们与预测人格印象分数的单目标方法进行了对比。在404个YouTube视频的数据集上,所有6种算法都能够优于所有5种人格特征的平均基线模型。这很有趣,因为之前发表的针对同一数据集的方法显示,大多数人格特征都比基线有所改善,但并非所有人格特征都同时有所改善。
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