Abstract:
Knowing malware types in every malware attacks is very helpful to the administrators to have proper defense policies for their system. It must be a massive benefit for th...Show MoreMetadata
Abstract:
Knowing malware types in every malware attacks is very helpful to the administrators to have proper defense policies for their system. It must be a massive benefit for the organization as well as the social if the automatic protection systems could themselves detect, classify an existence of new malware types in the whole network system with a few malware samples. This feature helps to prevent the spreading of malware as soon as any damage is caused to the networks. An approach introduced in this paper takes advantage of One-shot/few-shot learning algorithms in solving the malware classification problems by using some well-known models such as Matching Networks, Prototypical Networks. To demonstrate an efficiency of the approach, we run the experiments on the two malware datasets (namely, MalImg and Microsoft Malware Classification Challenge), and both experiments all give us very high accuracies. We confirm that if applying models correctly from the machine learning area could bring excellent performance compared to the other traditional methods, open a new area of malware research.
Date of Conference: 26-29 November 2019
Date Added to IEEE Xplore: 09 January 2020
ISBN Information:
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- Index Terms
- Few-shot Learning ,
- Few-shot Learning Model ,
- Machine Learning ,
- Learning Algorithms ,
- New Area Of Research ,
- Area Of Machine Learning ,
- Prototypical Network ,
- Neural Network ,
- Deep Learning ,
- Test Samples ,
- Convolutional Neural Network ,
- Classification Accuracy ,
- Short-term Memory ,
- Raw Files ,
- Learning Task ,
- Long Short-term Memory ,
- Grayscale Images ,
- Simple Convolutional Neural Network ,
- Binary Files ,
- API Calls ,
- Natarajan ,
- Ransomware ,
- Cybersecurity ,
- Siamese Network ,
- Static Analysis ,
- Remote Memory ,
- Normalized Cross-correlation
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Few-shot Learning ,
- Few-shot Learning Model ,
- Machine Learning ,
- Learning Algorithms ,
- New Area Of Research ,
- Area Of Machine Learning ,
- Prototypical Network ,
- Neural Network ,
- Deep Learning ,
- Test Samples ,
- Convolutional Neural Network ,
- Classification Accuracy ,
- Short-term Memory ,
- Raw Files ,
- Learning Task ,
- Long Short-term Memory ,
- Grayscale Images ,
- Simple Convolutional Neural Network ,
- Binary Files ,
- API Calls ,
- Natarajan ,
- Ransomware ,
- Cybersecurity ,
- Siamese Network ,
- Static Analysis ,
- Remote Memory ,
- Normalized Cross-correlation
- Author Keywords