An Effective Intrusion Detection Model Based on Random Forest and Neural Networks

Author:

Zhong Shao Hong1,Huang Hua Jun1,Chen Ai Bin1

Affiliation:

1. Central South University of Forestry and Technology

Abstract

This document explains and demonstrates how to prepare your camera-ready manuscript for Trans Tech Publications. The best is to read these instructions and follow the outline of this text. The text area for your manuscript must be 17 cm wide and 25 cm high (6.7 and 9.8 inches, resp.). Do not place any text outside this area. Use good quality, white paper of approximately 21 x 29 cm or 8 x 11 inches (please do not change the document setting from A4 to letter). Your manuscript will be reduced by approximately 20% by the publisher. Please keep this in mind when designing your figures and tables etc.Intrusion detection is a very important research domain in network security. Current intrusion detection systems (IDS) especially NIDS (Network Intrusion Detection System) examine all data features to detect intrusions. Also, many machine learning and data mining methods are utilized to fulfill intrusion detection tasks. This paper proposes an effective intrusion detection model that is computationally efficient and effective based on Random Forest based feature selection approach and Neural Networks (NN) model. We firstly utilize random forest method to select the most important features to eliminate the insignificant and/or useless inputs leads to a simplification of the problem, in order to faster and more accurate detection; Secondly, classic NN model is used to learn and detect intrusions using the selected important features. Experimental results on the well-known KDD 1999 dataset demonstrate the proposed hybrid model is actually effective.

Publisher

Trans Tech Publications, Ltd.

Subject

General Engineering

Cited by 7 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Novel Host Based Intrusion Detection System using Supervised Learning by Comparing SVM over Random Forest;2023 Eighth International Conference on Science Technology Engineering and Mathematics (ICONSTEM);2023-04-06

2. Research on Network Security Situation Awareness Based on the LSTM-DT Model;Sensors;2021-07-13

3. An Effective Intrusion Detection Model based on Random Forest Algorithm with I-SMOTE;Proceedings of the 23rd International Conference on Enterprise Information Systems;2021

4. RST-RF;Proceedings of the 2nd International Conference on Cryptography, Security and Privacy;2018-03-16

5. Improved Ensemble Classification Method of Thyroid Disease Based on Random Forest;2016

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