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Feature Extraction from Social Media Posts for Psychometric Typing of Participants

机译:从社交媒体帖子中提取特征以进行参与者的心理计量

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Sentiment analysis is an important tool for assessing the dynamic emotional terrain of social media interactions and behaviors [1]. Underlying the shallow emotional phenomenology are deeper and more stable strata, such as culture and psychology. This work addresses the latter, by applying text mining methods to the assessment of individual psychometrics. A methodology is described for reducing bulk, unstructured text to low-dimensional numeric feature vectors, from which components of the Myers-Briggs Typology Indicator (MBTI) [2J of the text's author can be reliably inferred. MBTI is a psychometric schema that emerged from the personality theories of Freud and Jung in the early 20th Century, refined and codified by K. C. Briggs and her daughter, I. Briggs-Myers in the 1940's and 50's. This schema positions people along four (nominally independent) axes between pairs of polar motivations/ preferences: Extroversion vs. Introversion (E-I); Intuition vs. Sensing (N-S); Feeling vs. Thinking (F-T); and, Judging vs Perceiving (J-P). Under this schema, each person falls into one of 16 psychometric groups, each designated by a four-character string (e.g., INTJ) [3]. Empirical results are shown for text generated during the social media interaction of over 8,600 PersonalityCafe users [4], all of whom are of known MBTI type. Blind tests to validate the features were conducted for a population (balanced by MBTI type), with exemplars based upon text samples having several thousand words each. The feature extraction method presented supports partial (1-letter) MBTI psychometric typing: E-I 95%; J-P 76.25%; F-T 91.25%, N-S 90%. Other results are reported.
机译:情感分析是评估社交媒体互动和行为的动态情感地形的重要工具[1]。浅层情感现象学的基础是文化和心理学等更深层次和更稳定的层次。这项工作通过将文本挖掘方法应用于个人心理测验的评估来解决后者。描述了一种用于将大量的非结构化文本减少为低维数字特征向量的方法,从中可以可靠地推断出Myers-Briggs类型学指示符(MBTI)[2J]的组成部分。 MBTI是一种心理计量学图式,源于20世纪初期的弗洛伊德和荣格的人格理论,并由K. C. Briggs和她的女儿I. Briggs-Myers在1940年代和50年代进行了完善和编纂。这种模式将人们沿着两对(名义上独立的)极动机/偏好对之间定位:外向与内向(E-I);外向与内向(E-I);外向与内向(E-I);外向与内向。直觉与感知(N-S);感觉与思考(FT);以及判断与感知(J-P)。在这种模式下,每个人都属于16个心理测验组之一,每个由四个字符的字符串(例如INTJ)指定[3]。显示了超过8600个PersonalityCafe用户[4]的社交媒体交互过程中生成的文本的经验结果,这些用户都是已知的MBTI类型。对人群(通过MBTI类型进行了平衡)进行了盲法验证,以验证特征,并基于每个样本具有数千个单词的文本样本进行了示例。提出的特征提取方法支持部分(1个字母)的MBTI心理计量分型:E-I 95%; E-I 95%。 J-P 76.25%; F-T 91.25%,N-S 90%。报告了其他结果。

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