Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution

A great amount of data is generated by the Internet and communication areas’ rapid technological improvement, which expands the size of the network. These cutting-edge technologies could result in unique network attacks that present security risks. This intrusion launches many attacks on the communi...

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Main Authors: Saranya N., Anandakumar Haldorai
Format: Article
Language:English
Published: Wiley 2024-01-01
Series:IET Information Security
Online Access:http://dx.doi.org/10.1049/2024/9937803
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author Saranya N.
Anandakumar Haldorai
author_facet Saranya N.
Anandakumar Haldorai
author_sort Saranya N.
collection DOAJ
description A great amount of data is generated by the Internet and communication areas’ rapid technological improvement, which expands the size of the network. These cutting-edge technologies could result in unique network attacks that present security risks. This intrusion launches many attacks on the communication network which is to be monitored. An intrusion detection system (IDS) is a tool to prevent from intrusions by inspecting the network traffic and to make sure the network integrity, confidentiality, availability, and robustness. Many researchers are focused to IDS with machine and deep learning approaches to detect the intruders. Yet, IDS face challenges to detect the intruders accurately with reduced false alarm rate, feature selection, and detection. High dimensional data affect the feature selection methods effectiveness and efficiency. Preprocessing of data to make the dataset as balanced, normalized, and transformed data is done before the feature selection and classification process. Efficient data preprocessing will ensure the whole IDS performance with improved detection rate (DR) and reduced false alarm rate (FAR). Since datasets are required for the various feature dimensions, this article proposes an efficient data preprocessing method that includes a series of techniques for data balance using SMOTE, data normalization with power transformation, data encoding using one hot and ordinal encoding, and feature reduction using a proposed deep sparse autoencoder (DSAE) with differential evolution (DE) on data before feature selection and classification. The efficiency of the transformation methods is evaluated with recursive Pearson correlation-based feature selection and graphical convolution neural network (G-CNN) methods.
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institution Kabale University
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spelling doaj-art-86ac3afb614b44499d252571216889002025-01-02T22:39:43ZengWileyIET Information Security1751-87172024-01-01202410.1049/2024/9937803Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential EvolutionSaranya N.0Anandakumar Haldorai1Department of Computer Science and EngineeringDepartment of Computer Science and EngineeringA great amount of data is generated by the Internet and communication areas’ rapid technological improvement, which expands the size of the network. These cutting-edge technologies could result in unique network attacks that present security risks. This intrusion launches many attacks on the communication network which is to be monitored. An intrusion detection system (IDS) is a tool to prevent from intrusions by inspecting the network traffic and to make sure the network integrity, confidentiality, availability, and robustness. Many researchers are focused to IDS with machine and deep learning approaches to detect the intruders. Yet, IDS face challenges to detect the intruders accurately with reduced false alarm rate, feature selection, and detection. High dimensional data affect the feature selection methods effectiveness and efficiency. Preprocessing of data to make the dataset as balanced, normalized, and transformed data is done before the feature selection and classification process. Efficient data preprocessing will ensure the whole IDS performance with improved detection rate (DR) and reduced false alarm rate (FAR). Since datasets are required for the various feature dimensions, this article proposes an efficient data preprocessing method that includes a series of techniques for data balance using SMOTE, data normalization with power transformation, data encoding using one hot and ordinal encoding, and feature reduction using a proposed deep sparse autoencoder (DSAE) with differential evolution (DE) on data before feature selection and classification. The efficiency of the transformation methods is evaluated with recursive Pearson correlation-based feature selection and graphical convolution neural network (G-CNN) methods.http://dx.doi.org/10.1049/2024/9937803
spellingShingle Saranya N.
Anandakumar Haldorai
Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
IET Information Security
title Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
title_full Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
title_fullStr Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
title_full_unstemmed Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
title_short Efficient Intrusion Detection System Data Preprocessing Using Deep Sparse Autoencoder with Differential Evolution
title_sort efficient intrusion detection system data preprocessing using deep sparse autoencoder with differential evolution
url http://dx.doi.org/10.1049/2024/9937803
work_keys_str_mv AT saranyan efficientintrusiondetectionsystemdatapreprocessingusingdeepsparseautoencoderwithdifferentialevolution
AT anandakumarhaldorai efficientintrusiondetectionsystemdatapreprocessingusingdeepsparseautoencoderwithdifferentialevolution