基于语言特征的社交媒体数据人格识别

Dilini Sewwandi Rajapaksha, K. Perera, S. Sandaruwan, Oshani Lakchani, A. Nugaliyadde, S. Thelijjagoda
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引用次数: 26

摘要

社交媒体已经成为观点和思想的重要平台。这表明,一个人的特征可以通过社交媒体状态更新来评估。这篇研究文章的目的是提供一个web应用程序,以便通过语言特征分析来检测一个人的个性。一个人的性格可以根据艾森克的三因素人格模型进行分类。提出的技术基于基于本体的文本分类,使用LIWC(语言查询和单词计数)特征的语言特征向量矩阵,包括使用监督机器学习算法的语义分析和基于问卷的人格检测。这对于人力资源管理系统在招聘和提升员工时至关重要,研发心理学家可以使用动态本体进行存储,以及所有其他API用户,包括大学和体育俱乐部。根据测试结果,该系统在基于真实世界人格检测问卷的应用中,准确率达到91%,结果表明,该技术能够以较高的准确率和速度检测出一个人的人格。
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Linguistic features based personality recognition using social media data
Social media has become a prominent platform for opinions and thoughts. This stated that the characteristics of a person can be assessed through social media status updates. The purpose of this research article is to provide a web application in order to detect one's personality using linguistic feature analysis. The personality of a person has classified according to Eysenck's Three Factor personality model. The proposed technique is based on ontology based text classification, linguistic feature-vector matrix using LIWC (Linguistic Inquiry and Word Count) features including semantic analysis using supervised machine learning algorithms and questionnaire based personality detection. This is vital for HR management system when recruiting and promoting employees, R&D Psychologists can use the dynamic ontology for storage purposes and all the other API users including universities and sports clubs. According to the test results the proposed system is in an accuracy level of 91%, when tested with a real world personality detection questionnaire based application, and results demonstrate that the proposed technique can detect the personality of a person with considerable accuracy and a speed.
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