Adaptive Mobile Malware Detection Model Based on CBR

Abstract

Today, the mobile phones can maintain lots of sensitive information. With the increasing capabilities of such phones, more and more malicious software malware targeting these devices have emerged. However there are many mobile malware detection techniques, they used specified classifiers on selected features to get their best accuracy. Thus, an adaptive malware detection approach is required to effectively detect the concept drift of mobile malware and maintain the accuracy. An adaptive malware detection approach is proposed based on case based reasoning technique in this paper to handle the concept drift issue in mobile malware detection. To demonstrate the design decision of our approach, several experiments are conducted. Large features set with 1,065 features from 10 different categories are used in evaluation. The evaluation includes both accuracy and efficiency of the model. The experimental results prove that our approach achieves acceptable performance and accuracy for the malware detection. Kyaw Soe Moe | Mya Mya Thwe "Adaptive Mobile Malware Detection Model Based on CBR" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-6 , October 2019, URL: https://www.ijtsrd.com/papers/ijtsrd28088.pdf Paper URL: https://www.ijtsrd.com/computer-science/computer-security/28088/adaptive-mobile-malware-detection-model-based-on-cbr/kyaw-soe-moe

Authors and Affiliations

Keywords

Related Articles

Coping Strategies among Youth of Professional Colleges

Medical and Engineering students experience stress from their 1st academic year. There are many studies which have assessed stress level of students but very few studies covered how they prevent or cope up with the stres...

Obstacle Identification on Railway Tracks

We propose a method for detecting obstacles by comparing input and reference train frontal view camera images. In the field of obstacle detection, most methods employ a machine learning approach, so they can only detect...

A Reliable Technique for Stem Cell Marker Identification

Stem cells have emerged to give a promising result in regenerative medicine. Stem cell derived growth have been studied in various animals. These stem cell are identified by specific markers. Various methods have been us...

Analytical Method Development and Validation of Metformin Hydrochloride by using RP HPLC with ICH Guidelines

A simple and reproducible method was developed for Metformin MET by Reverse Phase High Performance Liquid Chromatography RP HPLC . Metformin was separated on C18 column 4.6x250mm, particle size 5µm , using combination o...

Capacity Management and Survival of Selected Small and Medium Enterprises SMEs in South South Nigeria

The contribution of small and medium enterprises SMEs is very critical to the growth and development of a developing region like South South Nigeria. The objective of this study is to access the relationship that exists...

Download PDF file
  • EP ID EP670019
  • DOI -
  • Views 118
  • Downloads 0

How To Cite

(2019). Adaptive Mobile Malware Detection Model Based on CBR. International Journal of Trend in Scientific Research and Development, 3(6), 231-238. https://europub.co.uk./articles/-A-670019