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A Systematic Literature Review of Personality Trait Classification from Textual Content

机译:文学性质分类的系统文献综述从文本内容分类

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The day-to-day use of digital devices with Internet access, such as tablets and smartphones, has increased exponentially in recent years and this has had a consequent effect on the usage of the Internet and social media networks. When using social networks, people share personal data that is broadcast between users, which provides useful information for organizations. This means that characterizing users through their social media activity is an emerging research area in the field of Natural Language Processing (NLP) and this paper will present a review of how personality can be detected using online content. Approach A systematic literature review identified 30 papers published between 2007 and 2019, while particular inclusion and exclusion criteria were used to select the most relevant articles. Outcomes This review describes a variety of challenges and trends, as well as providing ideas for the direction of future research. In addition, personality trait identification and techniques were classified into different types, including deep learning, machine learning (ML) and semi-supervised/hybrid. Implications This paper’s outcomes will not only facilitate insight into the various personality types and models but will also provide knowledge about the relevant detection techniques. Novelty While prior studies have conducted literature reviews in the personality trait detection field, the systematic literature review in this paper provides specific answers to the proposed research questions. This is novel to this field as this particular type of study has not been conducted before.
机译:近年来,具有互联网接入的日常使用数字设备,例如平板电脑和智能手机,这增加了对互联网和社交媒体网络的使用影响。使用社交网络时,人们共享在用户之间广播的个人数据,这为组织提供了有用的信息。这意味着通过社交媒体活动表征用户是自然语言处理领域的新兴研究区域,本文将介绍如何使用在线内容检测个人性的方式。接近系统文献综述确定了30篇至2019年间公布的30篇论文,而特别包含和排除标准用于选择最相关的文章。结果这篇评论描述了各种挑战和趋势,以及为未来研究的方向提供思想。此外,人格特质识别和技术被分类为不同类型,包括深度学习,机器学习(ML)和半监督/混合。含义本文的结果不仅会促进各种人格类型和模型的洞察,而且还将提供有关相关检测技术的知识。新奇的虽然事先研究在人格特质检测领域进行了文学评论,但本文的系统文献综述为拟议的研究问题提供了具体的答案。这是对该领域的新颖,因为之前未进行这种特殊类型的研究。

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