Model Comparison and Multiclass Implementation Analysis on the UNSW NB15 Dataset

Nishit Rathod, Tanuj Gupta, N. Sharma, Saurabh Sharma
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引用次数: 1

Abstract

As the world has seen a dramatic ascent in the utilization of innovation in recent many years, the field of network safety has gotten always significant. Because of this, it has seen numerous advancements with the field of AI assuming a gigantic part in it. As AI or profound learning is additionally turning out to be further developed every day, use its advantages. Over, the most recent couple of years we have likewise seen a significant ascent in information significance which has made information assortment and development essential. This paper centers around the advancement of Network Intrusion Detection Systems (NIDS) utilizing Deep Learning. NIDS or IDS are utilized to identify any organizations which might act as an assault on any framework. We have utilized the UNSW NB15 dataset for our methodology as it is the latest and is enhanced different variables from its archetype and generally chipped away at the dataset – KDD CUP 99. We have utilized different normalizing instruments and extra trees classifier to set up the dataset for proper profound learning models and highlight determination. The executions utilized here are – Convolutional Neural Network, Recurrent Neural Network, and Long Recurrent Convolutional - Network to think about the outcomes. The arrangements carried out in this paper are both in double and multiclass with the significant center in regard to greatest full- scale accuracy, review, and f-score for the multiclass approach utilizing a connection of proper assault types and a way for additional exploration
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UNSW NB15数据集的模型比较与多类实现分析
近年来,随着世界对创新的利用急剧上升,网络安全领域一直具有重要意义。正因为如此,它已经看到了许多进步,人工智能领域在其中扮演了巨大的角色。随着人工智能或深度学习每天都在进一步发展,利用它的优势。最近几年,我们也看到了信息重要性的显著提升,这使得信息的分类和开发变得至关重要。本文围绕利用深度学习的网络入侵检测系统(NIDS)的进展展开。NIDS或IDS用于识别可能对任何框架进行攻击的任何组织。我们使用了UNSW NB15数据集作为我们的方法,因为它是最新的,并且从原型中增强了不同的变量,并且通常在数据集KDD CUP 99上进行了削减。我们使用了不同的归一化工具和额外的树分类器来建立合适的深度学习模型和突出显示确定的数据集。这里使用的执行是卷积神经网络,循环神经网络和长循环卷积网络来考虑结果。本文所进行的安排是双重和多类的,重要的中心是考虑到最大的全尺寸精度,审查和多类方法的f分,利用适当的攻击类型和一种额外的探索方式的联系
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