Comparing the Performance of Data Mining Algorithms in Predicting Sentiments on Twitter
Rusydi Umar,
Sunardi,
Muhammad Nur Ardhiansyah Nuriyah
Abstract:On the social networking site Twitter, users can post tweets, videos, and images. It can, however, also be disruptive and difficult. In order to categorize material and improve searchability, hashtags are crucial. This study focuses on examining the opinions of Twitter users who participate in trending topics. The algorithms K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) are employed for sentiment analysis. The dataset comprises of tweet information on popular subjects that was collected using the T… Show more
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