International audienceAndroid security has received a lot of attention over the last decade, especially malware investigation. Researchers attempt to highlight applications' security-relevant characteristics to better understand malware and effectively distinguish malware from benign applications. The accuracy and the completeness of their proposals are evaluated experimentally on malware and goodware datasets. Thus, the quality of these datasets is of critical importance: if the datasets are outdated or not representative of the studied population, the conclusions may be flawed. We specify different types of experimental scenarios. Some of them require unlabeled but representative datasets of the entire population. Others require datasets ...
Part 1: Full PapersInternational audienceImproving Smartphone anomaly-based malware detection techni...
International audienceThis study is related to the understanding of Android malware that now populat...
Abstract To address the issue of malware detection through large sets of applications, researchers h...
International audienceAndroid security has received a lot of attention over the last decade, especia...
Researchers have proposed kinds of malware detection methods to solve the explosive mobile security ...
The increase in the number of mobile devices that use the Android operating system has attracted the...
For Android malware detection, precise ground truth is a rare commodity. As security knowledge evolv...
As in other cybersecurity areas, machine learning (ML) techniques have emerged as a promising soluti...
Mobile devices are ubiquitous: nowadays most people own a mobile telephone.Because of this, it is a ...
Recently Android malicious samples threaten billions of the mobile end users’ security or priv...
International audienceSince Android became the first smartphone operating system, malware developers...
Machine-learning models have been recently used for detecting malicious Android applications, report...
Machine-learning models have been recently used for detecting malicious Android applications, report...
Mobile malware detection has attracted massive research effort in our community. A reliable and up-t...
Researchers compare their Machine Learning (ML) classification performances with other studies witho...
Part 1: Full PapersInternational audienceImproving Smartphone anomaly-based malware detection techni...
International audienceThis study is related to the understanding of Android malware that now populat...
Abstract To address the issue of malware detection through large sets of applications, researchers h...
International audienceAndroid security has received a lot of attention over the last decade, especia...
Researchers have proposed kinds of malware detection methods to solve the explosive mobile security ...
The increase in the number of mobile devices that use the Android operating system has attracted the...
For Android malware detection, precise ground truth is a rare commodity. As security knowledge evolv...
As in other cybersecurity areas, machine learning (ML) techniques have emerged as a promising soluti...
Mobile devices are ubiquitous: nowadays most people own a mobile telephone.Because of this, it is a ...
Recently Android malicious samples threaten billions of the mobile end users’ security or priv...
International audienceSince Android became the first smartphone operating system, malware developers...
Machine-learning models have been recently used for detecting malicious Android applications, report...
Machine-learning models have been recently used for detecting malicious Android applications, report...
Mobile malware detection has attracted massive research effort in our community. A reliable and up-t...
Researchers compare their Machine Learning (ML) classification performances with other studies witho...
Part 1: Full PapersInternational audienceImproving Smartphone anomaly-based malware detection techni...
International audienceThis study is related to the understanding of Android malware that now populat...
Abstract To address the issue of malware detection through large sets of applications, researchers h...