Review on Design Android Malware Family Classification Based On Hybrid Forensic Analysis Tool Using Deep Learning

Authors

  • Ms. Prachi S. Shinde Department of Computer Science and Engineering, Veermata Jijabai Technological Institute, Mumbai, Maharashtra, India Author
  • Prof. K.K. Joshi Department of Computer Science and Engineering, Veermata Jijabai Technological Institute, Mumbai, Maharashtra, India Author
  • Prof. Dr. V.K. Sambhe Department of Computer Science and Engineering, Veermata Jijabai Technological Institute, Mumbai, Maharashtra, India Author

DOI:

https://doi.org/10.32628/CSEIT24103103

Keywords:

CNN, Deep Learning, Dynamic, Malware, Static

Abstract

Android is widely used by both users and malicious actors. Attackers on Android are drawn to the large number of Android users. Our detection techniques should require an update as well, given the ongoing expansion of Android malware's variety and assault techniques. Fewer studies concentrate on dynamic features than the majority, which are based on static features. We are addressing the gap in the literature in this research by employing System calls and A malware substring is initially made up of a series of several substrings, each of which is termed a pixel and is 8 bits long. In the following phase, the 8-bit substring is transformed into a decimal number between 0 and 255. Moreover, every virus substring was changed. transformed into a vector in one dimension and then into a two-dimensional matrix with a defined breadth. It was dubbed a "malicious code matrix."The two-dimensional grayscale image is this matrix. In this research, we proposed a clustering algorithm-based approach for classifying Android malware. Testing the suggested rule-based clustering technique on a dataset with the best accuracy and lowest mean absolute error by 98.12%, respectively, yields better results.

Downloads

Download data is not yet available.

References

Mateless R, Rejabek D, Margalit O, Moskovitch R (2020) Decompiled APK based malicious code classification. Fut Gen Comput Syst 110:135–147

Pei X, Yu L, Tian S (2020) AMalNet: a deep learning framework based on graph convolutional networks for malware detection. Comput Secur 93:101792 .

Xiao X, Zhang S, Mercaldo F, Hu G, Sangaiah AK (2019) Android malware detection based on system call sequences and LSTM. Multim Tools Appl 78(4):3979–3999.

Lee WY, Saxe J, Harang R (2019) SeqDroid: obfuscated android malware detection using stacked convolutional and recurrent neural networks. In: Deep learning applications for cyber security. Springer, pp 197–210 .

Wang C, Xu Q, Lin X, Liu S (2019) Research on data mining of permissions mode for Android malware detection. Clust Comput 22(6):13337–13350 .

Pektas¸ A, Acarman T (2019) Learning to detect Android malware via opcode sequences. Neurocomputing 396:599–608 .

Roopak S, Thomas T, Emmanuel S (2019) Android malware detection mechanism based on Bayesian model averaging. In: Recent findings in intelligent computing techniques. Springer, pp 87–96

Liu P, Wang W, Luo X et al (2021) NSDroid: efficient multiclassification of android malware using neighborhood signature in local function call graphs. Int J Inf Secur 20:59–71.

Pektas¸ A, Acarman T (2020) Deep learning for effective Android malware detection using API call graph embeddings. Soft Comput 24(2):1027–1043 .

Zou K, Luo X, Liu P, Wang W, Wang H (2019) ByteDroid: android malware detection using deep learning on bytecode sequences. In: Chinese conference on trusted computing and information security. Springer .

Taheri R, Ghahramani M, Javidan R, Shojafar M, Pooranian Z, Conti M (2020) Similarity-based android malware detection using Hamming distance of static binary features. Futur Gener Comput Syst 105:230–247.

Alzaylaee MK, Yerima SY, Sezer S (2020) DL-Droid: Deep learning based android malware detection using real devices. Comput Secur 89:101663 .

Bakour K, U¨ nver HM, Ghanem R (2019) The Android malware detection systems between hope and reality. SN Appl Sci 1(9):1120 .

Yen Y-S, Sun H-M (2019) An android mutation malware detection based on deep learning using visualization of importance from codes. Microelectron Reliab 93:109–114 .

Hsien-De Huang T, Kao H-Y (2018) R2-d2: color-inspired convolutional neural network (CNN)-based android malware detections. In: 2018 IEEE international conference on big data (Big Data).

Downloads

Published

09-06-2025

Issue

Section

Research Articles