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Identifying Personality Types Using Document Classification Methods

机译:使用文档分类方法识别人格类型

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Are the words that people use indicative of their personality type preferences? In this paper, it is hypothesized that word-usage is not independent of personality type, as measured by the Myers-Briggs Type Indicator (MBTI) personality assessment tool. In-class writing samples were taken from 40 graduate students along with the MBTI. The experiment utilizes naive Bayes classifiers and Support Vector Machines (SVMs) in an attempt to guess an individual's personality type based on their word-choice. Classification is also attempted using emotional, social, cognitive, and psychological dimensions elicited by the analysis software, Linguistic Inquiry and Word Count (LIWC). The classifiers are evaluated with 40 distinct trials (leave-one-out cross validation), and parameters are chosen using leave-one-out cross validation of each trial's training set. The experiment showed that the naive Bayes classifiers (word-based and LIWC-based) outperformed the SVMs when guessing Sensing-Intuition (S-N) and Thinking-Feeling (T-F).
机译:人们使用指示他们的个性类型偏好的词语吗?在本文中,假设单词使用不与人格类型无关,由Myers-Briggs类型指示符(MBTI)个性评估工具测量。课堂上的书面样本从40名研究生以及MBTI一起获取。该实验利用Naive Bayes分类器和支持向量机(SVM),以试图根据他们的单词选择猜测个人的个性类型。还使用分析软件,语言查询和单词(LIWC)引发的情感,社会,认知和心理维度进行分类。分类器用40个不同的试验(休留一张交叉验证)进行评估,并选择参数使用每个试验培训集的休假交叉验证。实验表明,当猜测感测 - 直觉(S-N)和思想感觉(T-F)时,幼稚贝叶斯分类器(基于字基和基于LIWC的基于)表现优于SVM。

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