Sri Suning Kusumawardani

Work place: Dept. Electrical and Information Engineering, Universitas Gadjah Mada, Indonesia

E-mail: suning@ugm.ac.id

Website:

Research Interests:

Biography

Sri Suning Kusumawardani is a professor in Department of Electrical and Information Engineering, Faculty of Engineering, Universitas Gadjah Mada (UGM), Yogyakarta, Indonesia. She obtained her bachelor’s degree, master’s degree, and Doctoral degree in Electrical and Information Engineering from UGM. In 2009, she worked as a doctoral research fellow at the Faculty of Engineering Education, Utah State University, USA. Additionally, she served as a doctoral research fellow (Erasmus Mundus Research Program) at Universitat Polytecnica de Catalunya, Barcelona, Catalonia, Spain from 2012 to 2013. One of her research focuses is on using AI and machine learning techniques to enhance the security of computer systems.

Author Articles
Detecting Android Malware by Mining Enhanced System Call Graphs

By Rajif Agung Yunmar Sri Suning Kusumawardani Widyawan Widyawan Fadi Mohsen

DOI: https://doi.org/10.5815/ijcnis.2024.02.03, Pub. Date: 8 Apr. 2024

The persistent threat of malicious applications targeting Android devices has been growing in numbers and severity. Numerous techniques have been utilized to defend against this thread, including heuristic-based ones, which are able to detect unknown malware. Among the many features that this technique uses are system calls. Researchers have used several representation methods to capture system calls, such as histograms. However, some information may be lost if the system calls as a feature is only represented as a 1-dimensional vector. Graphs can represent the interaction of different system calls in an unusual or suspicious way, which can indicate malicious behavior. This study uses machine learning algorithms to recognize malicious behavior represented in a graph. The system call graph was fed into machine learning algorithms such as AdaBoost, Decision Table, Naïve Bayes, Random Forest, IBk, J48, and Logistic regression. We further employ a series feature selection method to improve detection accuracy and eliminate computational complexity. Our experiment results show that the proposed method has reduced feature dimension to 91.95% and provides 95.32% detection accuracy.

[...] Read more.
Other Articles