Towards Improved Malware Detection using Multilevel Ensemble Supervised Learning
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Abstract
Malware is a computer program or a piece of software that is designed to penetrate
and detriment computers without the owner's permission. There are different
malware types such as viruses, rootkits, keyloggers, worms, trojans, spyware, ransomware,
backdoors, logic bomb, etc. Volume, variant, and speed of propagation
of malware are increasing every year. Antivirus companies are receiving thousands
of malware on the daily basis, so detection of malware is a complex and
time-consuming task.
Traditional signature based and anomaly based malware detection techniques are
still in use. However, the signature based detection system fails for new unknown
malware. In case of anomaly based detection, if the malicious activity behaves like
a normal activity, the detection treats it as a normal one. Today's attackers are
using various obfuscation techniques which has become a great challenge for the
detectors to detect the malicious content with the traditional malware detection
techniques.
In this research, multilevel ensemble classification approach is introduced to detect
malware using the concept of API Calls usage frequency in a portable executable
format to find accuracy, sensitivity, specificity, misclassification rate, Kappa, precision,
false positive rate and false negative rate. The results show that the proposed
multilevel ensemble approach can classify malware with 94.67% accuracy
and 4.79% False Positive Rate.
Description
Master of Engineering -CSE
