MLNN: A Novel Network Intrusion Detection Based on Multilayer Neural Network

Chia-Fen Hsieh, Che-Min Su
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引用次数: 1

Abstract

The rapid development of network technology and related services has led to an increase in data traffic. Although some researches use machine learning (ML)-based intrusion detection schemes to detect intrusion. For network attacks, the changes in network traffic may lead to lower accuracy of machine learning-based models. It focuses on feature values ineffective learning materials, machine learning, and human learning similarly, and classifying data to analyze understanding, and take actions. The neural networks in deep learning used artificial neural network (ANNs) that imitate the functions of the human brain. Deep learning is a type of machine learning. The difference lies in inexperienced. In this paper, we proposed an intrusion detection architecture that based on a multi-layer neural network (MLNN). It processes data traffic and build a reliable intrusion detection model based on deep learning (DL). Compared with other machine learning or algorithms, Deep learning has the function of automatically extracting features and uses TensorFlow to execute Keras to analyze data. Through Keras, an open-source neural network library, intrusion detection targets can be achieved in a faster and more effective way. The main contribution of this paper includes considering various factors to evaluate and select, and let the integrated method perform intrusion detection.
基于多层神经网络的新型网络入侵检测
网络技术和相关业务的快速发展导致了数据流量的增加。尽管一些研究使用基于机器学习(ML)的入侵检测方案来检测入侵。对于网络攻击,网络流量的变化可能导致基于机器学习的模型精度降低。它关注的是无效学习材料的特征值、机器学习和类似的人类学习,以及对数据进行分类以分析理解并采取行动。深度学习中的神经网络使用模仿人脑功能的人工神经网络(ann)。深度学习是机器学习的一种。区别在于缺乏经验。本文提出了一种基于多层神经网络(MLNN)的入侵检测架构。它对数据流量进行处理,并基于深度学习建立可靠的入侵检测模型。与其他机器学习或算法相比,深度学习具有自动提取特征的功能,并使用TensorFlow执行Keras来分析数据。通过开源神经网络库Keras,可以更快更有效地实现入侵检测目标。本文的主要贡献在于综合考虑各种因素进行评估和选择,并使综合方法进行入侵检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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