KLIK (Kumpulan jurnaL Ilmu Komputer) (e-Journal)
Vol 10, No 1 (2023)

KOMPARASI ALGORITMA NAïVE BAYES, SUPPORT VECTOR MACHINE, DAN LOGISTIC REGRESSION PADA ANALISIS SENTIMEN PENGGUNA APLIKASI TRANSPORTASI ONLINE

Krisna Perdana Jaya Sitompul (Universitas Buana Perjuangan Karawang)
Adi Rizky Pratama (Universitas Buana Perjuangan Karawang)
Kiki Ahmad Baihaqi (Universitas Buana Perjuangan Karawang)



Article Info

Publish Date
28 Feb 2023

Abstract

Online transportation is one of the transportation that is increasingly in demand by the public at this time. Grab is an online transportation application that has many users in Indonesia. However, this system certainly has many shortcomings that are felt by users. One way to find out user satisfaction and disappointment with the application is to do sentiment analysis. By analyzing the deficiencies of the application, the company can find out the shortcomings of the application and how to fix it. The purpose of this study is to compare the accuracy between the Support Vector Machine, Naive Bayes, and Logistic Regression algorithms by conducting sentiment analysis on Grab application review data. The results of the comparative test found that the Naive Bayes algorithm has the best performance compared to other classification algorithms with an accuracy obtained by the Naive Bayes algorithm of 88.5%, while the Support Vector Machine algorithm has the lowest accuracy with an accuracy of 85.5%. So it can be concluded that the Naive Bayes algorithm has a better value than the Logistic Regression and Support Vector Machine algorithms. Keywords: Grab, Support Vector Machine, Naive Bayes, Logistic Regression Transportasi online adalah salah satu transportasi yang semakin diminati masyarakat pada saat ini. Grab adalah alah  satu  aplikasi  trasportasi online  yang  memiliki  pengguna  bisa  dikatakan  banyak  di  Indonesia. Namun  dalam  system  ini  pasti  memiliki banyak  kekurangan  yang  dirasakan  penggunanya. Salah satu cara untuk mengetahui kepuasan dan kekecewaan pengguna terhadap aplikasi tersebut yaitu melakukan analisis sentimen.  Dengan  menganalisis  kekurangan  dari  aplikasi  perusahaan dapat mengetahui kekurangan dari aplikasi dan bagaimana cara memperbaikinya. Tujuan penelitian ini untuk mengetahui perbandingan keakurasian antara algoritma Support Vector Machine, Naive Bayes, dan Logistic Regression dengan melakukan analisis sentimen pada data ulasan aplikasi Grab . Hasil pengujian komparasi ditemukan bahwa algoritma Naive bayes memiliki kinerja terbaik dibandingkan algoritma klasifikasi lainnya dengan akurasi yang di dapat algoritma Naive bayes sebesar 88.5%, sedangkan algoritma Support Vector Machine memiliki akurasi terendah dengan akurasi sebesar 85.5%. Sehingga dapat disimpulkan bahwa algoritma Naive bayes memiliki nilai yang lebih baik dibandingkan algoritma Logistic Regression dan Support Vector Machine.Kata kunci: Grab, Support Vector Machine, Naive Bayes, Logistic Regression

Copyrights © 2023






Journal Info

Abbrev

klik

Publisher

Subject

Computer Science & IT

Description

KLIK Scientific Journal, is a computer science journal as source of information in the form of research, the study of literature, ideas, theories and applications in the field of critical analysis study Computer Science, Data Science, Artificial Intelligence, and Computer Network, published two ...