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Cross-platform personality exploration system for online social networks: Facebook vs. Twitter

机译:在线社交网络的跨平台个性探索系统:Facebook与Twitter

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摘要

Social networking sites (SNS) are a rich source of latent information about individual characteristics. Crawling and analyzing this content provides a new approach for enterprises to personalize services and put forward product recommendations. In the past few years, commercial brands made a gradual appearance on social media platforms for advertisement, customers support and public relation purposes and by now it became a necessity throughout all branches. This online identity can be represented as a brand personality that reflects how a brand is perceived by its customers. We exploited recent research in text analysis and personality detection to build an automatic brand personality prediction model on top of the (Five-Factor Model) and (Linguistic Inquiry and Word Count) features extracted from publicly available benchmarks. Predictive evaluation on brands' accounts reveals that Facebook platform provides a slight advantage over Twitter platform in offering more self-disclosure for users' to express their emotions especially their demographic and psychological traits. Results also confirm the wider perspective that the same social media account carry a quite similar and comparable personality scores over different social media platforms. For evaluating our prediction results on actual brands' accounts, we crawled the Facebook API and Twitter API respectively for 100k posts from the most valuable brands' pages in the USA and we visualize exemplars of comparison results and present suggestions for future directions.
机译:社交网站(SNS)是有关各个特征的丰富潜在信息来源。爬行和分析此内容为企业提供个性化服务并提出产品建议提供了一种新方法。在过去的几年里,商业品牌在社交媒体平台上逐渐出现了广告,客户支持和公共关系目的,现在它成为所有分支机构的必要条件。这个在线身份可以表示为一个品牌个性,反映了它的客户如何被客户察觉。我们利用最近在文本分析和人格检测中进行了研究,以便在(五因素模型)的顶部构建自动品牌个性预测模型和(语言查询和单词数)从公开的基准中提取的功能。品牌账户的预测评估揭示了Facebook平台对Twitter平台提供了轻微的优势,在为用户提供更多的自披露以表达他们的情绪,特别是他们的人口统计和心理特征。结果还确认了相同的社交媒体账户在不同的社交媒体平台上携带相同和可比性的人格分数的更广泛的观点。为了评估我们对实际品牌账户的预测结果,我们分别从美国最有价值的品牌页面删除了Facebook API和Twitter API,我们可视化了比较结果的示例并提出了未来方向的建议。

著录项

  • 来源
    《Web Intelligence》 |2020年第1期|35-51|共17页
  • 作者单位

    Univ Potsdam Fac Digital Engn Hasso Plattner Inst Dept Internet Technol & Syst POB 90 04 60 D-14440 Potsdam Germany;

    Univ Potsdam Fac Digital Engn Hasso Plattner Inst Dept Internet Technol & Syst POB 90 04 60 D-14440 Potsdam Germany;

    Univ Potsdam Fac Digital Engn Hasso Plattner Inst Dept Internet Technol & Syst POB 90 04 60 D-14440 Potsdam Germany;

    Univ Potsdam Fac Digital Engn Hasso Plattner Inst Dept Internet Technol & Syst POB 90 04 60 D-14440 Potsdam Germany;

  • 收录信息 美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Big Five model; personality prediction; brand personality; machine learning; social media analysis;

    机译:五大模型;人格预测;品牌个性;机器学习;社交媒体分析;

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