Implementation of Particle Swarm Optimization on Sentiment Analysis of Cyberbullying using Random Forest

Helma Herlinda, Muhammad Itqan Mazdadi, M. Muliadi, D. Kartini, Irwan Budiman
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Abstract

Social media has exerted a significant influence on the lives of the majority of individuals in the contemporary era. It not only enables communication among people within specific environments but also facilitates user connectivity in the virtual realm. Instagram is a social media platform that plays a pivotal role in the sharing of information and fostering communication among its users through the medium of photos and videos, which can be commented on by other users. The utilization of Instagram is consistently growing each year, thereby potentially yielding both positive and negative consequences. One prevalent negative consequence that frequently arises is cyberbullying. Conducting sentiment analysis on cyberbullying data can provide insights into the effectiveness of the employed methodology. This research was conducted as an experimental research, aiming to compare the performance of Random Forest and Random Forest after applying the Particle Swarm Optimization feature selection technique on three distinct data split compositions, namely 70:30, 80:20, and 90:10. The evaluation results indicate that the highest accuracy scores were achieved in the 90:10 data split configuration. Specifically, the Random Forest model yielded an accuracy of 87.50%, while the Random Forest model, after undergoing feature selection using the Particle Swarm Optimization algorithm, achieved an accuracy of 92.19%. Therefore, the implementation of Particle Swarm Optimization as a feature selection technique demonstrates the potential to enhance the accuracy of the Random Forest method.
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利用随机森林对网络欺凌的情感分析进行粒子群优化
社交媒体对当代大多数人的生活产生了重大影响。它不仅实现了特定环境中人与人之间的交流,还促进了虚拟领域中的用户连接。Instagram 是一个社交媒体平台,在用户之间通过照片和视频共享信息和促进交流方面发挥着举足轻重的作用,其他用户可以对这些照片和视频发表评论。Instagram 的使用率每年都在持续增长,因此可能产生积极和消极的后果。经常出现的一个普遍的负面影响就是网络欺凌。对网络欺凌数据进行情感分析可以深入了解所采用方法的有效性。本研究以实验研究的形式进行,旨在比较随机森林和随机森林在三种不同的数据拆分组合(即 70:30、80:20 和 90:10)上应用粒子群优化特征选择技术后的性能。评估结果表明,90:10 数据分割配置的准确率最高。具体来说,随机森林模型的准确率为 87.50%,而使用粒子群优化算法进行特征选择后,随机森林模型的准确率达到了 92.19%。因此,将粒子群优化算法作为特征选择技术的实施表明,它具有提高随机森林方法准确性的潜力。
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