Abstract

Today’s modern society has faced many challenges due to the rapid digitization and growing number of hackers, which makes the networking-based systems to become a target place for intruders. The attacks may allure the users, and it compromised the whole system and makes the security the biggest challenge. In this regard, the best way to combat the issues is by exploring new ways to defend the network against threats. More recently, Intrusion Detection Systems (IDS) is a key enabling technology in maintaining the novel network security. Indeed, some existing systems utilize Improved Relevance Vector Machine (IVRM) classifier for performing intrusion detection in network-based systems. In this work, feature selection is done by using Gaussian Firefly Algorithm and Improved Relevance Vector Machine (IRVM) based classification is performed according to the selected features. However, for large-scale intrusion dataset, the intrusion detection is not robust; hence, it leads to high attack rates. The proposed system designed an Improved Bias based Convolutional Neural Network (ICNN) for high attack intrusion detection. For embracing high-security factors and enhanced protection, the proposed system performs three phases, such as preprocessing, feature selection, and classification. The first phase employs the KDD dataset and Kalman filtering method followed by feature selection utilizes Inertia Weight based Dragonfly Algorithm (IWDA) and finally identified the intrusion attacks using Improved Bias based Convolutional Neural Network (IBCNN) classifier. In this work, a novel model performed with the KDD dataset. The suggested method evaluated in terms of accuracy, f-measure, recall, and precision for examining performance compared with existing systems.

Highlights

  • Nowadays, due to the growing advent of digital technology and web applications, computer-related crimes are becoming more pervasive and becoming a potential challenge [1]

  • The KDD dataset is used for exploring testing and training the input samples

  • The proposed model facilitated the selection of optimal features that are obtained preprocessed information using Inertia Weight based Dragonfly Algorithm

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Summary

1.Introduction

Due to the growing advent of digital technology and web applications, computer-related crimes are becoming more pervasive and becoming a potential challenge [1]. More recent researches revealed that data mining solutions for IDS are the best defending measure in detecting the attack patterns [4,5,6,7]. This assists in continuous monitoring of the actions that performed in the network. For performing the elimination of duplicate and extraneous traits from the datasets, feature selection is a widely accepted technique in many systems It selects the most optimal subsets from the massive data and provides the enhanced characterization of patterns. Inertia Weight based Dragonfly Algorithm (IWDA) is used for performing feature selection In this phase, accuracy is obtained by generating objective function for getting optimal solutions. For performing better classification, Improved Bias based Convolutional Neural Network (IBCNN) is applied

2.Literature Review
Methods
Input datasets
Preprocessing
The formula given below calculates
Feature selection
Classification
Experimental results
Accuracy
Conclusion and Future Work
Full Text
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