Javascript must be enabled to continue!
Obfuscated Computer Malware Classification Based on Significant Opcode
View through CrossRef
Computer malware has greatly impacted the computer network securities and even personal computer users. Signature-based detection is incapable to recognize the obfuscated computer malware since it is being covered by the obfuscation techniques. Therefore, machine learning is being explored and equipped in the malware detection to withstand the threaten of malware. In fact, there are many features available, i.e., text string to be implemented for malware classification. Nevertheless, opcode could be one of the features owing to its relative smaller data size compared to the text string. In this research, the significant opcodes of executable malware files which referring to the prevalent content from malware-to-malware generation are extracted as training dataset. Several machine learning classifiers are generated and compared in terms of classification accuracy and speed, as well as the comparison is done with text string-based detection and signature-based detection. From the finding, it is shown that machine learning detection performs more than 2 times better than signature based and machine learning generated based-on significant opcode features is able to detect obfuscated malware over 10 times faster than text string feature and still achieve up to 98% of accuracy.
Title: Obfuscated Computer Malware Classification Based on Significant Opcode
Description:
Computer malware has greatly impacted the computer network securities and even personal computer users.
Signature-based detection is incapable to recognize the obfuscated computer malware since it is being covered by the obfuscation techniques.
Therefore, machine learning is being explored and equipped in the malware detection to withstand the threaten of malware.
In fact, there are many features available, i.
e.
, text string to be implemented for malware classification.
Nevertheless, opcode could be one of the features owing to its relative smaller data size compared to the text string.
In this research, the significant opcodes of executable malware files which referring to the prevalent content from malware-to-malware generation are extracted as training dataset.
Several machine learning classifiers are generated and compared in terms of classification accuracy and speed, as well as the comparison is done with text string-based detection and signature-based detection.
From the finding, it is shown that machine learning detection performs more than 2 times better than signature based and machine learning generated based-on significant opcode features is able to detect obfuscated malware over 10 times faster than text string feature and still achieve up to 98% of accuracy.
Related Results
Dynamic Features for Robust Malware Detection: A Systematic Review, Taxonomy, and Practical Analysis Framework
Dynamic Features for Robust Malware Detection: A Systematic Review, Taxonomy, and Practical Analysis Framework
The need to mitigate malware attacks cannot be overemphasized, as they pose serious threats to the critical information assets in cyberspace. Understanding and utilizing appropriat...
MCPDS: image-based malware classification method using PE metadata alone
MCPDS: image-based malware classification method using PE metadata alone
Abstract
In response to the increasing threat posed by the exponential growth of malware in cybersecurity, researchers have developed a numbe...
AndroDex: Android Dex Images of Obfuscated Malware
AndroDex: Android Dex Images of Obfuscated Malware
AbstractWith the emergence of technology and the usage of a large number of smart devices, cyber threats are increasing. Therefore, research studies have shifted their attention to...
Smali opcode based Android Malware detection and Obfuscation Identification
Smali opcode based Android Malware detection and Obfuscation Identification
Abstract
The Android platform's open-source nature makes it a prime target for attackers seeking to exploit vulnerabilities. The practice of reverse engineering in Android ...
Malware and Windows APIs: A Dangerous Duo
Malware and Windows APIs: A Dangerous Duo
This paper introduces its interaction with malware and Windows APIs (application programming interface). The first section describes malware and investigates various types such as ...
Android Malware Detection Techniques: A Literature Review
Android Malware Detection Techniques: A Literature Review
Objective:
This paper provides the basics of Android malware, its evolution and tools and
techniques for malware analysis. Its main aim is to present a review of the literature on ...
An optimal deep learning-based framework for the detection and classification of android malware
An optimal deep learning-based framework for the detection and classification of android malware
The use of smartphones is increasing rapidly and the malicious intrusions associated with it have become a challenging task that needs to be resolved. A secure and effective techn...
Android Malware Detection using HexCode Features
Android Malware Detection using HexCode Features
AbstractWith the widespread adoption of smartphones, Android has emerged as a preferred and highly targeted platform by malware. The proliferation of malware for Android devices ha...

