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Journal : Jurnal Informatika Software dan Network (JISN)

prediksi URL, Random Forest Prediksi URL Berbahaya Dengan Pendekatan Klasifikasi Menggunakan Algoritma Random Forest Dan LightGBM Sanjaya, I Wayan Indra Sakti Sanjaya; Oktavia Nur Khasanah; Eka Maurita; Anggraini Puspita Sari
Jurnal Informatika Software dan Network (JISN) Vol. 5 No. 2 (2024): Jurnal Informatika Software dan Network (JISN)
Publisher : Jurnal Informatika Software dan Network (JISN) diterbitkan oleh Lembaga Penelitian AMIK Dian Cipta Cendikia Pringsewu

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Abstract

This study aims to develop a method for predicting malicious URLs using Random Forest and LightGBM algorithms. The dataset used in this research comprises 651.191 URLs categorized as benign, defacement, phishing, and malware. Key features such as URL length, number of directories, and URL abnormality are extracted and used to train the models. Evaluation results indicate that both algorithms have high accuracy in classifying URLs based on the provided features. The program allows users to input URLs for evaluation and provides predictions on the URL categories. The developed method is expected to enhance digital security by providing an effective prediction tool against malicious URL threats.