推特用户的积极与消极属性分析

M. Roshanaei, Shivakant Mishra
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引用次数: 11

摘要

情绪和情绪对一个人的行为以及他/她与他人的互动的影响已经研究了很长时间。一个人的积极和消极是情感和心情的两个重要属性。社交媒体是一个非常重要的平台,我们可以通过用户发布的信息和与其他用户的互动来收集用户的积极和消极属性。在本文中,我们研究和分析了一个超过13万用户的Twitter数据集,以了解他们的积极和消极属性的本质。我们通过与社会、个人关注和心理过程相关的情绪分析来衡量行为属性。我们观察到社交媒体包含有用的行为线索,根据网络密度和社会活动程度将用户分为积极和消极群体,无论是在信息共享还是情感互动和社会意识方面。我们相信,我们的发现将有助于开发预测积极和消极用户的工具,并有助于通过在线社交媒体为帮助消极用户提供最佳建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analysis of positivity and negativity attributes of users in twitter
Effect of mood and emotion on a person's behavior and his/her interactions with other people has been studied for a long time. Positivity and negativity of a person are two important attributes of emotion and mood. Social media is a very important platform from which we can glean the positivity and negativity attributes of a user based on his/her message postings and interactions with other users. In this paper, we study and analyze a Twitter dataset of more than 130,000 users to understand the nature of their positivity and negativity attributes. We measure behavioral attributes by sentiment analysis relating to social personal concern and psychological process. We observe that social media contains useful behavioral cues to classify users into positive and negative groups based on network density and degree of social activity either in information sharing or emotional interaction and social awareness. We believe that our findings will be useful in developing tools for predicting positive and negative users and help provide the best recommendation towards helping negative users through online social media.
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