Classifying User Personality Based on Media Social Posts Using Support Vector Machine Algorithm Based on DISC Approach

Anggit Dwi Hartanto, Ema Utami, Sumarni Adi, Suwanto Raharjo, Mochammad Yusa, Aji Kamaludin
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Abstract

Twitter is one of the largest social media with 326 million active users in January 2019. Indonesia emerged as one of the largest countries in terms of Twitter users. Every day more than millions of tweets are published by Twitter users. This study tries to analyze Tweets to get the personalities from chosen Twitter accounts by using the DISC character approach. The classification algorithm that will be used is Support Vector Machine (SVM) with Term Frequency-Inverse Document Frequency (TF-IDF) weighting on the dataset. This research starts with preprocessing stages such as Data Cleansing and Case Folding. We involved psychologists to validate the personality approach of 109 Twitter accounts to determine each Twitter user character. The character classification results used in this study are Dominance, Influence, Steadiness, Compliance (DISC). From 109 Twitter accounts, we considered as the final dataset, we obtain an accuracy of 36.37%, average precision of 23.11%, and average recall performance of 35.25%.
基于DISC方法的支持向量机算法基于媒体社交帖子的用户个性分类
截至2019年1月,推特是最大的社交媒体之一,拥有3.26亿活跃用户。印尼成为Twitter用户最多的国家之一。Twitter用户每天发布的推文超过数百万条。本研究试图通过使用DISC性格分析方法来分析推文,以获得所选推特账户的性格。将使用的分类算法是支持向量机(SVM),对数据集进行词频-逆文档频率(TF-IDF)加权。本研究从数据清理和案例折叠等预处理阶段开始。我们让心理学家来验证109个推特账户的人格方法,以确定每个推特用户的性格。本研究使用的特征分类结果为显性、影响、稳定性、依从性(DISC)。从109个Twitter账户中,我们得到了36.37%的准确率,23.11%的平均准确率和35.25%的平均召回率。
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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