Journal / Conference2022

Time Efficiency on Computational Performance of PCA, FA and TSVD on Ransomware Detection

Authors

Benni Purnama, Deris Stiawan, Darmawijoyo Hanapi, Mohd. Yazid Idris, Sharipuddin, Nurul Afifah, Rahmat Budiarto

Published in

Indonesian Journal of Electrical Engineering and Informatics

Abstract

Ransomware is able to attack and take over access of the targeted user'scomputer. Then the hackers demand a ransom to restore the user's accessrights. Ransomware detection process especially in big data has problems interm of computational processing time or detection speed. Thus, it requires adimensionality reduction method for computational process efficiency. Thisresearch work investigates the efficiency of three dimensionality reductionmethods, i.e.: Principal Component Analysis (PCA), Factor Analysis (FA) andTruncated Singular Value Decomposition (TSVD). Experimental results onCICAndMal2017 dataset show that PCA is the fastest and most significantmethod in the computational process with average detection time of 34.33s.Furthermore, result of accuracy, precision and recall also show that the PCAis superior compared to FA and TSVD.

Author Team

1

Benni Purnama

2

Deris Stiawan

Universitas Sriwijaya

3

Darmawijoyo Hanapi

4

Mohd. Yazid Idris

Universitas Sriwijaya

5

Sharipuddin

6

Nurul Afifah

Universitas Sriwijaya

7

Rahmat Budiarto

Universitas Sriwijaya

Cite

Benni Purnama, Deris Stiawan, Darmawijoyo Hanapi, Mohd. Yazid Idris, Sharipuddin, Nurul Afifah, Rahmat Budiarto (2022). Time Efficiency on Computational Performance of PCA, FA and TSVD on Ransomware Detection. Indonesian Journal of Electrical Engineering and Informatics.
Logo Unsri

Computer Networks, Security, and Distributed Systems Research Group. Faculty of Computer Science, Sriwijaya University.

Contact

Address

Diploma Building, Faculty of Computer Science, Sriwijaya University, Jl. Srijaya Negara, Bukit Besar, Ilir Barat I, Palembang, South Sumatra, 30128

Affiliations

Diktisaintek Berdampak
Kemdikbud
Unsri
IEEE
ACM

Visitors

Flag Counter

© 2026 COMNETS Research Group. All Rights Reserved.