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Subject: XGBoost, detecting malware, Android applications


Year: 2023


Type: Proceeding article



Title: Detecting Malware in Android Applications using XGBoost


Author: Kitanovski, Aleksandar
Author: Mihajloska Trpcheska, Hristina
Author: Dimitrova, Vesna



Abstract: The omnipresence of Android devices and the amount of sensitive information kept in them makes detecting malware in Android applications crucial. In this paper, the efficacy of using machine learning models for the purpose of malware detection in Android applications was examined, and several XGBoost models were developed and compared - each with a distinct feature set. We used the f1 score, precision, recall, confusion matrices, and precision-recall curves to compare the models. Accuracy was not considered since we needed a balanced dataset. One of the models we developed, which used all the available features in the dataset, had encouraging results with high precision and recall.


Publisher: Ss Cyril and Methodius University in Skopje, Faculty of Computer Science and Engineering, Republic of North Macedonia


Relation: CIIT 2023 papers;10;



Identifier: oai:repository.ukim.mk:20.500.12188/27385
Identifier: http://hdl.handle.net/20.500.12188/27385



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Detecting Malware in Android Applications using XGBoost202332