Penerapan Binary Particle Swarm Optimization Support Vector Machine untuk Klasifikasi Komentar Cyberbullying di Instagram

Authors

  • Dewi Fortuna Department of Statistics, IPB University
  • Itasia Dina Sulvianti Department of Statistics, IPB University
  • Gerry Alfa Dito Department of Statistics, IPB University

DOI:

https://doi.org/10.29244/xplore.v11i1.859

Keywords:

binary particle swarm optimization, cyberbullying, feature selection, support vector machine, text mining

Abstract

Freedom of speech on social media is sometimes inappropriate with the ethics of communicating and has led to cyberbullying. Instagram is the most commonly used social media in cyberbullying. Cyberbullying needs to be minimized because it has many adverse effects. One way that can be done is by identifying cyberbullying comments so those comments can be deleted automatically. The method used in this study is text classification using Support Vector Machine (SVM) algorithm with the application of Binary Particle Swarm Optimization (BPSO) optimization method as features selection. The study aims to build a cyberbullying comments classification model and compare the classification model performance with and without the application of features selection. The experimental results showed that modeling with SVM produces a reasonably accurate classification performance over 72% for all classification performance on each C. The application of BPSO for features selection can improve classification performance by increasing accuracy and specificity. However, the model without features selection on C = 0,1 is chosen in this study case because it has the highest sensitivity with good accuracy and specificity that can detect cyberbullying comments more accurately.  

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Published

2022-01-31

How to Cite

Fortuna, D., Sulvianti, I. D., & Dito, G. A. (2022). Penerapan Binary Particle Swarm Optimization Support Vector Machine untuk Klasifikasi Komentar Cyberbullying di Instagram. Xplore: Journal of Statistics, 11(1), 59–69. https://doi.org/10.29244/xplore.v11i1.859

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