2020
DOI: 10.1109/access.2020.3019282
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Multifamily Classification of Android Malware With a Fuzzy Strategy to Resist Polymorphic Familial Variants

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Cited by 9 publications
(12 citation statements)
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“…As shown in Figure (8), the proposed ABIL-MVD with both sliding window size of 46 and 128 sample outperforms the fixed incremental batch with all tested incremental batch. It can also be noted from Figure (8) that as the batch size decreases the accuracy is improve while the corresponding error rate decreases as shown in Figure (9). Although this property is desirable, it is noted that the small fixed size incremental batch increases the update frequency and disrupt the normal operation of the malware detection.…”
Section: Figure 7 Results Of Comparison Between the Proposed Adaptive Batch Size (Aibl-mvd) With The Fixed Batch Size (Ibl)mentioning
confidence: 82%
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“…As shown in Figure (8), the proposed ABIL-MVD with both sliding window size of 46 and 128 sample outperforms the fixed incremental batch with all tested incremental batch. It can also be noted from Figure (8) that as the batch size decreases the accuracy is improve while the corresponding error rate decreases as shown in Figure (9). Although this property is desirable, it is noted that the small fixed size incremental batch increases the update frequency and disrupt the normal operation of the malware detection.…”
Section: Figure 7 Results Of Comparison Between the Proposed Adaptive Batch Size (Aibl-mvd) With The Fixed Batch Size (Ibl)mentioning
confidence: 82%
“…More particularly, accuracy of the model will be slightly degraded during the warning level and will be boosted after updated when the batch window is full or out of control state is occurred. Figure (8) and Figure (9) show the detailed results of the performance of both fixed batch window size and adaptive batch window size in terms of detection accuracy in Figure (8) and classification error in Figure (9). As can be observed, in both figures the proposed concept-driftbased adaptive incremental batch performs better than the other fixed batch size incremental learning strategies.…”
Section: Figure 5 Base Classifier Selectionmentioning
confidence: 78%
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“…A class of objects with a range of membership degrees is referred to as a fuzzy set [25]. This type of set defines a membership (characteristic) function that assigns each object a membership degree ranging between [0, 1] [26].…”
Section: Fuzzy Optimized Feature Selectionmentioning
confidence: 99%
“…This type of solution, on the other hand, is incapable of detecting malware that isn't in the database. As malware is becoming more prevalent, it is vital to present a solution that can accurately detect all varieties of malware [6], while using the least amount of time and resources possible.…”
Section: Introductionmentioning
confidence: 99%