A Lightweight Malware Classification Method Based on Detection Results of Anti-Virus Software
Title | A Lightweight Malware Classification Method Based on Detection Results of Anti-Virus Software |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Lee, Y., Choi, S. S., Choi, J., Song, J. |
Conference Name | 2017 12th Asia Joint Conference on Information Security (AsiaJCIS) |
Date Published | Aug. 2017 |
Publisher | IEEE |
ISBN Number | 978-1-5386-2132-5 |
Keywords | antivirus software detection, Arrays, computer viruses, cyber threats, data mining, Databases, dynamic analysis, Electronic mail, Human Behavior, Internet, lightweight malware classification, Malware, malware analysis, malware classification, Malware Clustering, Metrics, pattern classification, Phased arrays, privacy, program diagnostics, pubcrawl, resilience, Resiliency, static analysis |
Abstract | With the development of cyber threats on the Internet, the number of malware, especially unknown malware, is also dramatically increasing. Since all of malware cannot be analyzed by analysts, it is very important to find out new malware that should be analyzed by them. In order to cope with this issue, the existing approaches focused on malware classification using static or dynamic analysis results of malware. However, the static and the dynamic analyses themselves are also too costly and not easy to build the isolated, secure and Internet-like analysis environments such as sandbox. In this paper, we propose a lightweight malware classification method based on detection results of anti-virus software. Since the proposed method can reduce the volume of malware that should be analyzed by analysts, it can be used as a preprocess for in-depth analysis of malware. The experimental showed that the proposed method succeeded in classification of 1,000 malware samples into 187 unique groups. This means that 81% of the original malware samples do not need to analyze by analysts. |
URL | https://ieeexplore.ieee.org/document/8025993/ |
DOI | 10.1109/AsiaJCIS.2017.20 |
Citation Key | lee_lightweight_2017 |
- Malware Analysis
- static analysis
- Resiliency
- resilience
- pubcrawl
- program diagnostics
- privacy
- Phased arrays
- pattern classification
- Metrics
- Malware Clustering
- malware classification
- antivirus software detection
- malware
- lightweight malware classification
- internet
- Human behavior
- Electronic mail
- dynamic analysis
- Databases
- Data mining
- cyber threats
- computer viruses
- arrays