Myers-Briggs Type Indicator Personality Model Classification in English Text using Convolutional Neural Network Method

Joseph Ananda Sugihdharma, F. A. Bachtiar
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Abstract

Myers-Briggs Type Indicator (MBTI) is a personality model developed by Katharine Cooks Briggs and Isabel Briggs Myers in 1940. It displays a combination of preferences from four domains. Generally, test takers need to answer about 50 to 70 questions, and it is relatively expensive to know MBTI personality. The researcher developed a personality classification system using the Convolutional Neural Network (CNN) method and GloVe (Global Vectors for Word Representation) word embedding to solve this problem. The dataset used in this research consists of 8,675 data from the Kaggle site. The steps in this research are downloading the dataset from Kaggle, text preprocessing, GloVe weighting, classification using the CNN method, and evaluation using accuracy from the Confusion Matrix. Based on the tests carried out, using GloVe weighting can improve the model accuracy rather than random weighting. The best GloVe word dimensions depend on the metrics used to measure the model performance and the data of the classes contained in the dataset. From the CNN hyperparameter tuning test, the Adamax optimizer performs better and produces higher accuracy than the Adam optimizer. In addition, the CNN hyperparameter tuning increased model accuracy more significantly compared with the best GloVe word embedding dimensions.
基于卷积神经网络的英语文本Myers-Briggs类型指标人格模型分类
迈尔斯-布里格斯类型指标(MBTI)是凯瑟琳·库克斯·布里格斯和伊莎贝尔·布里格斯·迈尔斯于1940年提出的一种人格模型。它显示了来自四个域的首选项组合。一般来说,考生需要回答大约50到70个问题,了解MBTI人格是相对昂贵的。研究人员利用卷积神经网络(CNN)方法和GloVe (Global Vectors for Word Representation)词嵌入开发了一个人格分类系统来解决这个问题。本研究使用的数据集包括来自Kaggle网站的8,675个数据。本研究的步骤是从Kaggle下载数据集,文本预处理,GloVe加权,使用CNN方法分类,以及使用混淆矩阵的准确性进行评估。实验结果表明,采用GloVe加权比随机加权更能提高模型的精度。最佳GloVe word维度取决于用于度量模型性能的指标和数据集中包含的类的数据。从CNN超参数调优测试来看,Adamax优化器比Adam优化器性能更好,产生的精度更高。此外,与最佳GloVe词嵌入维数相比,CNN超参数调优更显著地提高了模型精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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