Publication | Open Access
On the Impact of Sample Duplication in Machine-Learning-Based Android Malware Detection
68
Citations
54
References
2021
Year
Artificial IntelligenceMalware FamilyMachine LearningEngineeringEvasion TechniqueMachine Learning ToolData DeduplicationSoftware AnalysisSample DuplicationData ScienceData MiningPattern RecognitionAdversarial Machine LearningMalware DetectionStatisticsKnowledge DiscoveryMobile MalwareComputer ScienceDeep LearningProgram AnalysisMalware Analysis
Malware detection at scale in the Android realm is often carried out using machine learning techniques. State-of-the-art approaches such as DREBIN and MaMaDroid are reported to yield high detection rates when assessed against well-known datasets. Unfortunately, such datasets may include a large portion of duplicated samples, which may bias recorded experimental results and insights. In this article, we perform extensive experiments to measure the performance gap that occurs when datasets are de-duplicated. Our experimental results reveal that duplication in published datasets has a limited impact on supervised malware classification models. This observation contrasts with the finding of Allamanis on the general case of machine learning bias for big code. Our experiments, however, show that sample duplication more substantially affects unsupervised learning models (e.g., malware family clustering). Nevertheless, we argue that our fellow researchers and practitioners should always take sample duplication into consideration when performing machine-learning-based (via either supervised or unsupervised learning) Android malware detections, no matter how significant the impact might be.
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