Che AkmalChe Akmal Che YahayaAhmad FirdausSalwana Mohamad AsmaraFerda ErnawanMohd Faizal AbdollahAb RazakF GotzS StiegerU ReipsM RazakN AnuarR SallehA FirdausW EnckK TamA FeizollahN AnuarR SallehL CavallaroA KumarK KuppusamyG AghilaS YerimaS SezerA FeizollahN AnuarR SallehA WahabA FirdausN AnuarM RazakI HashemS BachokA SangaiahM KursaA JankowskiW RudnickiM HassenP ChanA FirdausN AnuarA KarimM RazakR KumarX ZhangR KhanA SharifM Mas'udS SahibM AbdollahS SelamatC Huoy
The usage of android system is rapidly growing in mobile devices.Android system might also incur severe different malware dangers and security threats such as infections, root exploit, Trojan, and worms.The malware has potential to compromise and steal the private data, classified data, instant messages, private business contacts, and confidential schedule.Malware detection is needed due to the malware continuously evolve rapidly.This research proposed automated feature selection using Boruta algorithm to detect the malware.The proposed method adopts machine learning prediction and optimizes the selecting features in order to reduce the model of machine learning complexity.Boruta algorithm is used to select features automatically for assisting the machine learning.The experimental results show that the proposed method is able to reach 99.73% accuracy in machine learning classification.
Ajay KaushikSanchit AnandRiya SehgalNeeyati Anand
Neeyati AnandRiya SehgalSanchit AnandAjay Kaushik
Silvia GonzálezÁlvaro HerreroJavier SedanoEmilio Corchado
Alejandro Guerra-ManzanaresSven NõmmHayretdin Bahşi
Arvind MahindruAmrit Lal Sangal