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333304

A STUDY FOR MALWARE STATIC ANALYSIS CLASSIFICATION ALGORITHMS WITH DIFFERENT FEATURES EXTRACTORS'

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Last updated: 23 Dec 2024

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Abstract

: Smartphones are mobile devices that can connect to the Internet through various means such as Wi-Fi, cellular data networks (3G, 4G, 5G), or even through tethering to another device. Once connected to the Internet, smartphones can access a wide range of online services and applications, including web browsing, social media, email, streaming videos, online gaming, and much more. Malware attacks have significantly increased as a result of data movement. Malware causes unexpected smartphone behavior, including changing phone bill charges, intrusive advertisements, confusing messages being sent to contacts, unreliable performance, the appearance of new apps, unusual data use, and a noticeable drop in battery life. But smartphone consumers are still vulnerable to malware attacks. To solve this problem, we created a Malware detection system. Malicious Android Apps are categorized using static analysis through the APK's metadata file. “Drebin" dataset primarily uses the Android manifest file as one of the key features for Android malware detection. Additionally, we investigated algorithms for static analysis, including adaboost, ANN, decision trees, extra trees, K-nearest neighbors, lasso regression, logistic regression, MLP, naïve bayes, random forests, ride regression, support vector machines and XGB. We employ “Drebin" dataset with different feature extractors to reduce dataset dimensionality. We use TF-IDF and word2vec feature extractor. The experimental results show that TF_IDF performs better on "Drebin" dataset.

DOI

10.21608/ijicis.2023.242171.1300

Keywords

Mobile Security, Feature Extractor, Malware Analysis, Machine Learning, classification

Authors

First Name

sara

Last Name

shehata

MiddleName

-

Affiliation

CS, FCIS, ASU

Email

sara.shehata@cis.asu.edu.eg

City

-

Orcid

-

First Name

Islam

Last Name

Hegazy

MiddleName

-

Affiliation

Department of Computer Science, Faculty of Computer and Information Sciences, Ain Shams University

Email

islheg@cis.asu.edu.eg

City

-

Orcid

0000-0002-1572-463X

First Name

El-Sayed

Last Name

El-Horabty

MiddleName

M.

Affiliation

Computer Science Department, Faculty of Computer and Information Sciences, Ain Shams University

Email

shorbaty@cis.asu.edu.eg

City

-

Orcid

0000-0003-1066-4807

Volume

23

Article Issue

4

Related Issue

45130

Issue Date

2023-12-01

Receive Date

2023-10-12

Publish Date

2023-12-01

Page Start

19

Page End

32

Print ISSN

1687-109X

Online ISSN

2535-1710

Link

https://ijicis.journals.ekb.eg/article_333304.html

Detail API

https://ijicis.journals.ekb.eg/service?article_code=333304

Order

333,304

Type

Original Article

Type Code

494

Publication Type

Journal

Publication Title

International Journal of Intelligent Computing and Information Sciences

Publication Link

https://ijicis.journals.ekb.eg/

MainTitle

A STUDY FOR MALWARE STATIC ANALYSIS CLASSIFICATION ALGORITHMS WITH DIFFERENT FEATURES EXTRACTORS'

Details

Type

Article

Created At

23 Dec 2024