02284nas a2200205 4500000000100000000000100001008004100002260001200043653001200055653001200067653002100079100002000100700001800120245007800138856008100216300001200297490000600309520174900315022001402064 2021 d c06/202110aAndroid10aMalware10aMachine Learning1 aMeghna Dhalaria1 aEkta Gandotra00aA Hybrid Approach for Android Malware Detection and Family Classification uhttps://www.ijimai.org/journal/sites/default/files/2021-05/ijimai_6_6_18.pdf a174-1880 v63 aWith the increase in the popularity of mobile devices, malicious applications targeting Android platform have greatly increased. Malware is coded so prudently that it has become very complicated to identify. The increase in the large amount of malware every day has made the manual approaches inadequate for detecting the malware. Nowadays, a new malware is characterized by sophisticated and complex obfuscation techniques. Thus, the static malware analysis alone is not enough for detecting it. However, dynamic malware analysis is appropriate to tackle evasion techniques but incapable to investigate all the execution paths and also it is very time consuming. So, for better detection and classification of Android malware, we propose a hybrid approach which integrates the features obtained after performing static and dynamic malware analysis. This approach tackles the problem of analyzing, detecting and classifying the Android malware in a more efficient manner. In this paper, we have used a robust set of features from static and dynamic malware analysis for creating two datasets i.e. binary and multiclass (family) classification datasets. These are made publically available on GitHub and Kaggle with the aim to help researchers and anti-malware tool creators for enhancing or developing new techniques and tools for detecting and classifying Android malware. Various machine learning algorithms are employed to detect and classify malware using the features extracted after performing static and dynamic malware analysis. The experimental outcomes indicate that hybrid approach enhances the accuracy of detection and classification of Android malware as compared to the case when static and dynamic features are considered alone. a1989-1660