KOMPARASI ALGORITMA NAIVE BAYES DAN K-NEAREST NEIGHBOR PADA ANALISIS SENTIMEN TERHADAP ULASAN PENGGUNA APLIKASI TOKOPEDIA

Ryfan Maulana, Muhammad Raihan, Imam Santoso
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Abstract

Tokopedia is one of the leading e-commerce platforms in Indonesia. The use of e-commerce platforms has increased rapidly in recent years. This is due to technological advances, increased internet access, and consumer behavior that prefers to shop online. In today's digital era, user reviews have an increasingly important role in shaping consumer perceptions of a product or service. The purpose of this research is to conduct sentiment analysis on application performance based on user reviews of the Tokopedia application. Researchers made the decision to use sentiment analysis because it is the most suitable method for processing data sets. From 1019 Tokopedia user reviews on the Play Store that were collected, 176 positive reviews and 843 negative reviews were obtained. Then, the data is classified using the Naive Bayes and K-Nearest Neighbor algorithms, then optimized using Particle Swarm Optimization. The results of the research conducted obtained an accuracy of 76.30% for the Naive Bayes accuracy value without feature selection, 74.09% for Naive Bayes results using feature selection. Then the accuracy value obtained for K-Nearest Neighbor without feature selection is 83.10%, and with feature selection is 83.53%. From the results obtained, the effect of using Particle Swarm Optimization selection features on the two algorithms does not have a big impact, there is an insignificant change in accuracy and AUC values which in the Naïve Bayes algorithm actually decreases  
Tokopedia是印尼领先的电子商务平台之一。近年来,电子商务平台的使用迅速增加。这是由于技术的进步,互联网接入的增加,以及更喜欢在网上购物的消费者行为。在当今的数字时代,用户评论在塑造消费者对产品或服务的看法方面发挥着越来越重要的作用。本研究的目的是基于Tokopedia应用程序的用户评论对应用程序性能进行情感分析。研究人员决定使用情感分析,因为它是最适合处理数据集的方法。从我们收集到的1019条Tokopedia用户评论中,我们获得了176条正面评论和843条负面评论。然后,使用朴素贝叶斯和k近邻算法对数据进行分类,然后使用粒子群算法对数据进行优化。研究结果表明,未使用特征选择的朴素贝叶斯准确率值准确率为76.30%,使用特征选择的朴素贝叶斯准确率值准确率为74.09%。无特征选择时的k近邻精度为83.10%,有特征选择时的k近邻精度为83.53%。从得到的结果来看,使用粒子群优化选择特征对两种算法的影响并不大,精度和AUC值的变化不显著,而Naïve贝叶斯算法的精度和AUC值实际上有所降低
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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