Analyzing Machine Learning Approaches for Online Malware Detection in Cloud
Jeffrey C Kimmell, Mahmoud Abdelsalam, Maanak Gupta

TL;DR
This paper evaluates various machine learning models for online malware detection in cloud environments, finding neural networks most effective at identifying malware impacts on process-level features.
Contribution
It introduces an approach using process-level metrics and compares multiple ML models, highlighting neural networks' superior performance for cloud malware detection.
Findings
Neural network models most accurately detect malware impacts.
Support Vector Classifier and Random Forest also effective.
Models trained on 40,680 samples from real cloud environments.
Abstract
The variety of services and functionality offered by various cloud service providers (CSP) have exploded lately. Utilizing such services has created numerous opportunities for enterprises infrastructure to become cloud-based and, in turn, assisted the enterprises to easily and flexibly offer services to their customers. The practice of renting out access to servers to clients for computing and storage purposes is known as Infrastructure as a Service (IaaS). The popularity of IaaS has led to serious and critical concerns with respect to the cyber security and privacy. In particular, malware is often leveraged by malicious entities against cloud services to compromise sensitive data or to obstruct their functionality. In response to this growing menace, malware detection for cloud environments has become a widely researched topic with numerous methods being proposed and deployed. In this…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques · Anomaly Detection Techniques and Applications
Methodstravel james
