Analysis of Android Malware Detection (AMD)To Recognisecryptoware Usingdeep Learning

Rajan, Anuja A and Durga, R. (2023) Analysis of Android Malware Detection (AMD)To Recognisecryptoware Usingdeep Learning. In: 2023 International Conference on New Frontiers in Communication, Automation, Management and Security (ICCAMS), Bangalore, India.

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Abstract

Android has surpassed as the most important mobile operating system, taking a considerably larger share of the global market. Android malware poses severe dangers to mobile device security and the services it supports as its volume and sophistication continue to rise. As a result, there is significant interest in applying machine learning to improve the detection of android malware. The main cause of this is a dearth of knowledge, resources, and techniques for detecting android malware.This is mostly caused by a dearth of knowledge, resources, and techniques for detecting android malware. Using classic statistical techniques to forecast malware detection has usually led to the development of underwhelming detection models, leaving a number of questions unresolved. Machine learning has become the industry standard for identifying android malware in massive data sets thanks to the simple availability of advanced computational resources. The Machine Learning (ML) and Deep Learning (DL) models for Android malware detection are examined in this extensive literature study.This article review’s two main subheadings are AMD using ML and DL in data mining. Last but not least, DL approach is the best Android malware detection for productive outcomes. It can be seen that a variety of inputs were utilised to investigate autonomous feature extraction algorithms and forecasting techniques. DL techniques improve the processing efficiency of large real-time data sets. Recent DL research has revealed the most efficient hybrid processing techniques for data samples from Android apps.The output of DL and ML algorithms is evaluated using the dataset acquired from the Drebin project. In addition to being frequently used by researchers, the Drebin samples are also openly accessible. Three measures are used to assess the performance of ML and DL algorithms: recall, F1-score, and weighted F-measure (WFM). MATLAB was used to implement these metrics in their calculation and application. The J48, Heterogeneous Information Network (HIN), Gated Recurrent Unit (GRU), and Deep Belief Network (DBN)algorithms were used to compare the outcomes to well-known ML and DL techniques. The proposed method displayed better performance in differentiating android malware detection when compared to the other analysed methods.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Deep Learning
Domains: Computer Science
Depositing User: Mr IR Admin
Date Deposited: 28 Aug 2025 07:09
Last Modified: 28 Aug 2025 07:09
URI: https://ir.vistas.ac.in/id/eprint/10990

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