ACOMS+ 및 학술지 리포지터리 설명회

  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
  • 2024년 07월 03일(수) 13:30
 

논문 상세

Home > 논문 상세
  • E-ISSN 3022-5388

시각적 특징과 머신 러닝으로 악성 URL 구분: HTTPS의 역할

Malicious URL Detection by Visual Characteristics with Machine Learning: Roles of HTTPS

한국인공지능학회지 / Journal of Korean Artificial Intelligence Association, (E)3022-5388
2023, v.1 no.2, pp.1-9
https://doi.org/10.24225/jkaia.2023.1.2.1
홍성원(Sung-Won HONG) (을지대학교)
강민수(Min-Soo KANG) (을지대학교)
  • 다운로드 수
  • 조회수

Abstract

In this paper, we present a new method for classifying malicious URLs to reduce cases of learning difficulties due to unfamiliar and difficult terms related to information protection. This study plans to extract only visually distinguishable features within the URL structure and compare them through map learning algorithms, and to compare the contribution values of the best map learning algorithm methods to extract features that have the most impact on classifying malicious URLs. As research data, Kaggle used data that classified 7,046 malicious URLs and 7.046 normal URLs. As a result of the study, among the three supervised learning algorithms used (Decision Tree, Support Vector Machine, and Logistic Regression), the Decision Tree algorithm showed the best performance with 83% accuracy, 83.1% F1-score and 83.6% Recall values. It was confirmed that the contribution value of https is the highest among whether to use https, sub domain, and prefix and suffix, which can be visually distinguished through the feature contribution of Decision Tree. Although it has been difficult to learn unfamiliar and difficult terms so far, this study will be able to provide an intuitive judgment method without explanation of the terms and prove its usefulness in the field of malicious URL detection.

keywords
Decision Tree, Support Vector Machine, Linear Regression, URL, Visual feature


투고일Submission Date
2023-10-26
수정일Revised Date
2023-11-16
게재확정일Accepted Date
2023-12-30
상단으로 이동

한국인공지능학회지