用分类方法分析推特上对伊斯兰教的情绪

Q3 Engineering
Supriadi Panggabean, W. Gata, Tri Agus Setiawan
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引用次数: 1

摘要

在当今的数字时代,互联网的影响和使用已成为一种必需品,特别是在印度尼西亚本身,2021年初互联网用户达到2.026亿人。印尼人最广泛使用的互联网是社交媒体。据媒体报道,在伊斯兰学校环境中发生的几起性暴力事件,激进伊斯兰问题的出现,他说这是伊斯兰学校环境思想的成果,恐怖主义也被认为是来自对伊斯兰学校知识的误解,对不同宗教的不容忍,伊斯兰学校学生性格的变化等等都会导致对伊斯兰学校的负面想法。为了了解社交媒体用户对伊斯兰学校的情绪是如何影响的,我们使用分类方法分析twitter对伊斯兰学校的情绪。使用的方法有Naïve贝叶斯(NB)、决策树(DT)和K-最近邻(K- nn)。为了提高分类方法的性能,利用粒子群优化(PSO)的选择特征进行分类。另一方面,工具框架、执行Python脚本和快速挖掘器、数据挖掘器、数据挖掘器、数据挖掘器、数据预处理器、数据挖掘器、数据挖掘器、语料库、情感分析器等。从Naïve贝叶斯算法得到的准确率:76.86% +/- 5.24%(微平均值:76.86%),决策树准确率:61.38% +/- 5.46%(微平均值:61.35%),K-NN准确率:74.70% +/- 4.83%(微平均值:74.67%),Naïve贝叶斯PSO准确率:80.80% +/- 4.86%(微平均值:80.79%),决策树PSO准确率:65.27% +/- 5.26%(微平均值:65.28%),K-NN PSO准确率:67.24% +/- 7.92%(微平均值:67.25%)。结果表明,Naïve贝叶斯粒子群算法得到了最好的、准确的结果。本研究成功地获得了一种有效且最佳的分类算法,用于对伊斯兰学校情感分析相关的正面评论和负面评论进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Twitter Sentiment Towards Madrasahs Using Classification Methods
In today's digital era, the influence and use of the internet has become a necessity, especially in Indonesia itself, internet users in early 2021 reached 202.6 million people. The most widely used internet use by Indonesians is social media. Several incidents of sexual violence that occurred in the madrasa environment as reported in the media, the emergence of radical Islamic issues which he said were the fruit of thoughts from the madrasa environment, terrorism which was also said to come from misinterpreting knowledge from madrasahs, intolerance to different religions, changes in the character of madrasah students and so on will cause negative thoughts towards  madrasah. To find out how the sentiment of social media users towards madrasahs, a study was conducted on analisis twitter sentiment towards madrasah using the classification method. The methods used are Naïve Bayes (NB), Decision Tree (DT) and K – Nearest Neighbor (K-NN).   Toimprove the performance of the classification method is carried out using the Particle Swarm Optimization (PSO) selection feature.   On the other hand, tools gataframework, execute Python script dan rapidminer diguna kan jug a dalam penelitian this to membantu preprocessi ng dan cleansing pa da datasethingga membantu menciptaka n corpus dan sentiment ana lysis.   Acuration obtained from the Naïve Bayes algorithm accuracy: 76.86% +/- 5.24% (micro average: 76.86%), Decision Tree accuracy: 61.38% +/- 5.46% (micro average: 61.35%), K-NN accuracy: 74.70% +/- 4.83% (micro average: 74.67%), Naïve Bayes PSO accuracy: 80.80% +/- 4.86% (micro average: 80.79%, Decision Tree PSO accuracy: 65.27% +/- 5.26% (micro average: 65.28%), and K-NN PSO accuracy: 67.24% +/- 7.92% (micro average: 67.25%).  The results showed that the Naïve Bayes PSO algorithm got the best and accurate results. This study succeeded in obtaining an effective and best algorithm in classifying positive comments and negative comments related to sentiment analysis towards madrasahs by classification method.
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CiteScore
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