{"title":"Optimal Feature Selection with Weight Optimised Deep Neural Network for Incremental Learning-Based Intrusion Detection in Fog Environment","authors":"Aftab Alam Abdussami, Mohammed Faizan Farooqui","doi":"10.1142/s0219649222500423","DOIUrl":null,"url":null,"abstract":"Fog computing acts as an intermediate component to reduce the delays in communication among end-users and the cloud that offer local processing of requests among end-users through fog devices. Thus, the primary aim of fog devices is to ensure the authenticity of incoming network traffic. Anyhow, these fog devices are susceptible to malicious attacks. An efficient Intrusion Detection System (IDS) or Intrusion Prevention System (IPS) is necessary to offer secure functioning of fog for improving efficiency. IDSs are a fundamental component for any security system like the Internet of things (IoT) and fog networks for ensuring the Quality of Service (QoS). Even though different machine learning and deep learning models have shown their efficiency in intrusion detection, the deep insight of managing the incremental data is a complex part. Therefore, the main intent of this paper is to implement an effective model for intrusion detection in a fog computing platform. Initially, the data dealing with intrusion are collected from diverse benchmark sources. Further, data cleaning is performed, which is to identify and remove errors and duplicate data, to create a reliable dataset. This improves the quality of the training data for analytics and enables accurate decision making. The conceptual and temporal features are extracted. Concerning reducing the data length for reducing the training complexity, optimal feature selection is performed based on an improved meta-heuristic concept termed Modified Active Electrolocation-based Electric Fish Optimization (MAE-EFO). With the optimally selected features or data, incremental learning-based detection is accomplished by Incremental Deep Neural Network (I-DNN). This deep learning model optimises the testing weight using the proposed MAE-EFO by concerning the objective as to minimise the error difference between the predicted and actual results, thus enhancing the performance of new incremental data. The validation of the proposed model on the benchmark datasets and other datasets achieves an attractive performance when compared over other state-of-the-art IDSs.","PeriodicalId":127309,"journal":{"name":"J. Inf. Knowl. Manag.","volume":"63 2","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2022-05-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"J. Inf. Knowl. Manag.","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1142/s0219649222500423","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 2
Abstract
Fog computing acts as an intermediate component to reduce the delays in communication among end-users and the cloud that offer local processing of requests among end-users through fog devices. Thus, the primary aim of fog devices is to ensure the authenticity of incoming network traffic. Anyhow, these fog devices are susceptible to malicious attacks. An efficient Intrusion Detection System (IDS) or Intrusion Prevention System (IPS) is necessary to offer secure functioning of fog for improving efficiency. IDSs are a fundamental component for any security system like the Internet of things (IoT) and fog networks for ensuring the Quality of Service (QoS). Even though different machine learning and deep learning models have shown their efficiency in intrusion detection, the deep insight of managing the incremental data is a complex part. Therefore, the main intent of this paper is to implement an effective model for intrusion detection in a fog computing platform. Initially, the data dealing with intrusion are collected from diverse benchmark sources. Further, data cleaning is performed, which is to identify and remove errors and duplicate data, to create a reliable dataset. This improves the quality of the training data for analytics and enables accurate decision making. The conceptual and temporal features are extracted. Concerning reducing the data length for reducing the training complexity, optimal feature selection is performed based on an improved meta-heuristic concept termed Modified Active Electrolocation-based Electric Fish Optimization (MAE-EFO). With the optimally selected features or data, incremental learning-based detection is accomplished by Incremental Deep Neural Network (I-DNN). This deep learning model optimises the testing weight using the proposed MAE-EFO by concerning the objective as to minimise the error difference between the predicted and actual results, thus enhancing the performance of new incremental data. The validation of the proposed model on the benchmark datasets and other datasets achieves an attractive performance when compared over other state-of-the-art IDSs.
雾计算充当中间组件,减少终端用户和云之间的通信延迟,云通过雾设备为终端用户之间的请求提供本地处理。因此,雾设备的主要目的是确保传入网络流量的真实性。无论如何,这些雾装置很容易受到恶意攻击。为了提高效率,需要一个高效的入侵检测系统(IDS)或入侵防御系统(IPS)来提供安全的雾功能。ids是任何安全系统(如物联网(IoT)和雾网络)的基本组件,用于确保服务质量(QoS)。尽管不同的机器学习和深度学习模型在入侵检测中已经显示出它们的效率,但管理增量数据的深度洞察是一个复杂的部分。因此,本文的主要目的是在雾计算平台中实现一种有效的入侵检测模型。最初,处理入侵的数据是从不同的基准源收集的。此外,还执行数据清理,以识别和删除错误和重复数据,从而创建可靠的数据集。这提高了用于分析的训练数据的质量,并实现了准确的决策。提取概念特征和时间特征。在减少数据长度以降低训练复杂性方面,基于改进的元启发式概念进行了最优特征选择,称为改进的主动电定位电鱼优化(MAE-EFO)。增量深度神经网络(incremental Deep Neural Network, I-DNN)利用最优选择的特征或数据,实现基于学习的增量检测。该深度学习模型使用所提出的MAE-EFO优化测试权重,其目标是最小化预测结果与实际结果之间的误差差异,从而提高新增量数据的性能。与其他最先进的ids相比,在基准数据集和其他数据集上对所提出的模型进行了验证,获得了具有吸引力的性能。