Random CapsNet Forest Model for Imbalanced Malware Type Classification Task
Behavior of a malware varies with respect to malware types. Therefore,knowing type of a malware affects strategies of system protection softwares. Many malware type classification models empowered by machine and deep learning achieve superior accuracies to predict malware types.Machine learning base...
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Zusammenfassung: | Behavior of a malware varies with respect to malware types. Therefore,knowing
type of a malware affects strategies of system protection softwares. Many
malware type classification models empowered by machine and deep learning
achieve superior accuracies to predict malware types.Machine learning based
models need to do heavy feature engineering and feature engineering is
dominantly effecting performance of models.On the other hand, deep learning
based models require less feature engineering than machine learning based
models. However, traditional deep learning architectures and components cause
very complex and data sensitive models. Capsule network architecture minimizes
this complexity and data sensitivity unlike classical convolutional neural
network architectures. This paper proposes an ensemble capsule network model
based on bootstrap aggregating technique. The proposed method are tested on two
malware datasets, whose the-state-of-the-art results are well-known. |
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DOI: | 10.48550/arxiv.1912.10836 |