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Darknet Traffic Big-Data Analysis and Network Management for Real-Time Automating of the Malicious Intent Detection Process by a Weight Agnostic Neural Networks Framework

机译:Darknet流量大数据分析和网络管理,实时自动化通过权重无止无主无常的神经网络框架进行恶意意图检测过程

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摘要

Attackers are perpetually modifying their tactics to avoid detection and frequently leverage legitimate credentials with trusted tools already deployed in a network environment, making it difficult for organizations to proactively identify critical security risks. Network traffic analysis products have emerged in response to attackers’ relentless innovation, offering organizations a realistic path forward for combatting creative attackers. Additionally, thanks to the widespread adoption of cloud computing, Device Operators (DevOps) processes, and the Internet of Things (IoT), maintaining effective network visibility has become a highly complex and overwhelming process. What makes network traffic analysis technology particularly meaningful is its ability to combine its core capabilities to deliver malicious intent detection. In this paper, we propose a novel darknet traffic analysis and network management framework to real-time automating the malicious intent detection process, using a weight agnostic neural networks architecture. It is an effective and accurate computational intelligent forensics tool for network traffic analysis, the demystification of malware traffic, and encrypted traffic identification in real time. Based on a weight agnostic neural networks (WANNs) methodology, we propose an automated searching neural net architecture strategy that can perform various tasks such as identifying zero-day attacks. By automating the malicious intent detection process from the darknet, the advanced proposed solution is reducing the skills and effort barrier that prevents many organizations from effectively protecting their most critical assets.
机译:攻击者永远改变他们的战术,以避免检测,并经常利用与已经部署在网络环境中值得信赖的工具合法凭据,因此很难为企业主动识别关键的安全隐患。网络流量分析产品已经出现在响应攻击者的不断创新,推进企业提供一个现实的路径打击创意攻击。此外,由于广泛采用云计算,设备运营商(DevOps的)进程,事,物(物联网)的网络,保持有效的网络可见性已成为一个高度复杂的和压倒一切的过程。是什么让网络流量分析技术特别有意义的是它的核心能力相结合,提供恶意企图的检测能力。在本文中,我们提出了一个新颖的暗网流量分析和网络管理框架,以实时自动化恶意检测过程中,采用重量无关的神经网络架构。这是一个网络流量分析的实时有效和准确的计算智能取证工具,恶意流量的神秘色彩,和加密的流量识别。基于权重无关的神经网络(WANNs)的方法,我们提出了一个自动搜索神经网络架构策略,可以执行各种任务,如识别零日攻击。通过从暗网自动化恶意检测过程中,先进的提出的解决方案是减少的技能和努力屏障,阻止有效地保护他们最重要的资产许多组织。

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