一种用于网络异常识别的前馈和反向传播神经网络方法

A. Prashanthi, R. Reddy
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引用次数: 0

摘要

互联网将我们所有的小工具连接在一起的能力对我们的日常生活产生了深远的影响。包括医药、智能建筑和商业在内的许多行业都在使用基于网络的技术。这些程序员迎合大量人群,提供各种各样的服务。因此,基于网络的应用程序的安全性不断受到学术界和商界领袖的关注。由于深度学习的发展,我们现在可以探索以前无法触及的话题。黑客利用网络中的安全漏洞访问受保护的资源。这种知识和对系统的访问可能造成无法弥补的伤害,并造成无法估量的损失。因此,发现这些网络攻击是至关重要的。在系统地探索每一组可想象的网络特征时,基于深度学习的算法所需的少量输入是一个主要卖点。鉴于此,在本研究中,我们提供了一种基于前馈反传播神经网络的深度学习架构,用于检测网络中的异常。我们的调查发现了14种独特形式的恶意网络活动。这些研究是使用标准制定的CICIDS2017数据集进行的,研究结果显示准确率为91.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feed-Forward and Back Propagation Neural Network Approach for Identifying Network Anomalies
The internet’s ability to link all of our gadgets together has a profound impact on our daily routines. Numerous industries, including medicine, smart buildings, and commerce, all make use of network-based technologies. These programmers cater to big populations and offer a wide variety of services. As a result, the security of network-based applications has continuously attracted attention from academics and business leaders. Thanks to deep learning’s development, we can now probe previously inaccessible topics. Hackers take advantage of security holes in networks to access protected resources. This kind of knowledge and access to systems can do irreparable harm and inflict incalculable losses. Therefore, it is crucial that these network attacks be uncovered. While systematically probing every conceivable set of network features, the few inputs required by deep learning-based algorithms are a major selling point. In light of this, in this research, we provide a deep learning architecture based on feed-forward back propagation neural networks for the purpose of detecting anomalies into a network. Our investigation uncovered 14 unique forms of malicious network activity. The studies were conducted using the standard-setting CICIDS2017 dataset, and the findings show an accuracy of 91.02%.
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