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Detecting malware attacks using extracted behavioral features

机译:使用提取的行为特征检测恶意软件攻击

摘要

Detecting malware attacks is described herein. A computer-implemented method may include receiving, via a processor, events from a plurality of activity monitors. The method also include extracting, via the processor, a plurality of behavioral features from the received events. The method may further include detecting, via the processor, a malware attack based on the extracted behavioral features using a malware identification model trained on private data and public data using a machine learning technique, wherein the private data includes private enterprise attack findings. The method may also include executing, via the processor, an ad hoc protection improvement based on the detected malware attack.
机译:这里描述了检测恶意软件攻击。计算机实现的方法可以包括经由处理器从多个活动监视器接收事件。该方法还包括通过处理器提取来自所接收的事件的多个行为特征。该方法还可以包括通过处理器使用处理器使用处理器检测恶意软件攻击,所述恶意软件特征使用使用机器学习技术在专用数据和公共数据上培训的恶意软件识别模型,其中私有数据包括私有企业攻击结果。该方法还可以包括通过处理器基于检测到的恶意软件攻击执行AD Hoc保护改进。

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