Analisis Sentimen Komentar pada Lagu “Takut” Idgitaf Menggunakan SVM Kernel Linear dan Polynomial

Desi Daomara Sitanggang, Wahyu S. J. Saputra, Muhammad Nasrudin

Abstract


The development of social media, particularly YouTube, has become a platform for people to express their opinions about musical works. The song “Takut” by Idgitaf is one of the pieces that has attracted much attention from listeners because it tells about fear and anxiety in entering adulthood. The great enthusiasm of listeners has generated thousands of diverse comments on the music video. Sentiment analysis of the comments uses a Natural Language Processing (NLP) approach to detect emotional patterns based on two labels, namely positive and negative. This study aims to conduct sentiment analysis on comments about the song “Takut” using the Support Vector Machine (SVM) algorithm by comparing the linear and polynomial kernels. Before the analysis, the data go through preprocessing, labeling, and feature extraction stages. In data labeling, a lexicon-based method is used and then manually updated, where words such as takut, nangis, and sedih are categorized as positive sentiments. The study also applies random undersampling to address data imbalance. Based on testing of 13,037 comments, SVM with a linear kernel showed superior performance with an accuracy of 91%, compared to the polynomial kernel which achieved 87%. This indicates that the linear kernel is more effective in classifying sentiments in this type of text data.

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