多标签半监督分类在推文个性预测中的应用

A. C. E. S. Lima, L. N. de Castro
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引用次数: 24

摘要

社交媒体允许网络冲浪者制作和分享不同主题的内容,暴露他们的活动、观点、感受和想法。在这种背景下,在线社交媒体吸引了数据分析研究人员的兴趣,除了创建涉及社交网站的统计数据外,他们还试图推断行为和趋势。一项可能涉及这些数据的研究被称为个性分析,旨在了解用户在社交媒体上的行为。因此,本文使用机器学习技术来预测twitter群组中的人格特征。在传统的人格预测方法中,分析是在用户的个人资料和他们的推文中进行的。然而,在本文中,该方法源于人格分析是在tweet组中执行的事实。该预测是基于大五模型,也称为五因素模型,该模型将人格特征分为五个维度,并使用语言信息来识别这些特征。本文以巴西电视台的电视节目为基准。该系统的平均准确率为84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-label Semi-supervised Classification Applied to Personality Prediction in Tweets
Social media allow web surfers to produce and share content about different subjects, exposing their activities, opinions, feelings and thoughts. In this context, online social media has attracted the interest of data analysis researchers seeking to infer behaviors and trends, besides creating statistics involving social sites. A possible research involving these data is known as personality analysis, which aims to understand the user's behavior in a social media. Thus, this paper uses machine learning techniques to predict personality traits in groups of tweets. In traditional approaches of personality prediction the analysis is made in the users' profiles and their tweets. However, in this paper the approach arises from the fact that the personality analysis is performed in groups of tweets. The prediction is based on the Big Five Model, also called Five Factor Model, which divides personality traits into five dimensions and uses linguistic information to identify these traits. This paper uses TV shows from Brazilian stations for benchmarking. The system achieved an average accuracy of 84%.
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