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Detection of unknown computer worms based on behavioral classification of the host

机译:基于主机的行为分类检测未知计算机蠕虫

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摘要

Machine learning techniques are widely used in many fields. One of the applications of machine learning in the field of information security is classification of a computer behavior into malicious and benign. Antiviruses consisting of signature-based methods are helpless against new (unknown) computer worms. This paper focuses on the feasibility of accurately detecting unknown worm activity in individual computers while minimizing the required set of features collected from the monitored computer. A comprehensive experiment for testing the feasibility of detecting unknown computer worms, employing several computer configurations, background applications, and user activity, was performed. During the experiments 323 computer features were monitored by an agent that was developed. Four feature selection methods were used to reduce the number of features and four learning algorithms were applied on the resulting feature subsets. The evaluation results suggest that by using classification algorithms applied on only 20 features the mean detection accuracy exceeded 90%, and for specific unknown worms accuracy reached above 99%, while maintaining a low level of false positive rate.
机译:机器学习技术已广泛应用于许多领域。信息安全领域中机器学习的应用之一是将计算机行为分类为恶意和良性。由基于签名的方法组成的防病毒软件对新型(未知)计算机蠕虫无能为力。本文着重于在最小化从受监视计算机收集的必需功能集的同时,准确检测单个计算机中未知蠕虫活动的可行性。进行了一项综合测试,以测试使用多种计算机配置,后台应用程序和用户活动检测未知计算机蠕虫的可行性。在实验期间,由开发的代理监视323计算机功能。四种特征选择方法用于减少特征数量,并且四种学习算法应用于所得特征子集。评估结果表明,通过仅对20个特征应用分类算法,平均检测精度超过90%,对于特定的未知蠕虫,其准确率达到99%以上,同时保持较低的误报率。

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