An Effective Networks Intrusion Detection Approach Based on Hybrid
Harris Hawks and Multi-Layer Perceptron
- URL: http://arxiv.org/abs/2402.14037v1
- Date: Wed, 21 Feb 2024 06:25:50 GMT
- Title: An Effective Networks Intrusion Detection Approach Based on Hybrid
Harris Hawks and Multi-Layer Perceptron
- Authors: Moutaz Alazab, Ruba Abu Khurma, Pedro A. Castillo, Bilal Abu-Salih,
Alejandro Martin, David Camacho
- Abstract summary: This paper proposes an Intrusion Detection System (IDS) employing the Harris Hawks Optimization (HHO) to optimize Multilayer Perceptron learning.
HHO-MLP aims to select optimal parameters in its learning process to minimize intrusion detection errors in networks.
HHO-MLP showed superior performance by attaining top scores with accuracy rate of 93.17%, sensitivity level of 95.41%, and specificity percentage of 95.41%.
- Score: 47.81867479735455
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper proposes an Intrusion Detection System (IDS) employing the Harris
Hawks Optimization algorithm (HHO) to optimize Multilayer Perceptron learning
by optimizing bias and weight parameters. HHO-MLP aims to select optimal
parameters in its learning process to minimize intrusion detection errors in
networks. HHO-MLP has been implemented using EvoloPy NN framework, an
open-source Python tool specialized for training MLPs using evolutionary
algorithms. For purposes of comparing the HHO model against other evolutionary
methodologies currently available, specificity and sensitivity measures,
accuracy measures, and mse and rmse measures have been calculated using KDD
datasets. Experiments have demonstrated the HHO MLP method is effective at
identifying malicious patterns. HHO-MLP has been tested against evolutionary
algorithms like Butterfly Optimization Algorithm (BOA), Grasshopper
Optimization Algorithms (GOA), and Black Widow Optimizations (BOW), with
validation by Random Forest (RF), XG-Boost. HHO-MLP showed superior performance
by attaining top scores with accuracy rate of 93.17%, sensitivity level of
89.25%, and specificity percentage of 95.41%.
Related papers
- Faster WIND: Accelerating Iterative Best-of-$N$ Distillation for LLM Alignment [81.84950252537618]
This paper reveals a unified game-theoretic connection between iterative BOND and self-play alignment.
We establish a novel framework, WIN rate Dominance (WIND), with a series of efficient algorithms for regularized win rate dominance optimization.
arXiv Detail & Related papers (2024-10-28T04:47:39Z) - Testing the Efficacy of Hyperparameter Optimization Algorithms in Short-Term Load Forecasting [0.0]
We use the Panama Electricity dataset to evaluate HPO algorithms' performances on a surrogate forecasting algorithm, XGBoost, in terms of accuracy (i.e., MAPE, $R2$) and runtime.
Results reveal significant runtime advantages for HPO algorithms over Random Search.
arXiv Detail & Related papers (2024-10-19T09:08:52Z) - Poisson Process for Bayesian Optimization [126.51200593377739]
We propose a ranking-based surrogate model based on the Poisson process and introduce an efficient BO framework, namely Poisson Process Bayesian Optimization (PoPBO)
Compared to the classic GP-BO method, our PoPBO has lower costs and better robustness to noise, which is verified by abundant experiments.
arXiv Detail & Related papers (2024-02-05T02:54:50Z) - An efficient hybrid classification approach for COVID-19 based on Harris
Hawks Optimization and Salp Swarm Optimization [0.0]
This study presents a hybrid binary version of the Harris Hawks Optimization algorithm (HHO) and Salp Swarm Optimization (SSA) for Covid-19 classification.
The proposed algorithm (HHOSSA) achieved 96% accuracy with the SVM, 98% and 98% accuracy with two classifiers.
arXiv Detail & Related papers (2022-12-25T19:52:18Z) - Optimization of Annealed Importance Sampling Hyperparameters [77.34726150561087]
Annealed Importance Sampling (AIS) is a popular algorithm used to estimates the intractable marginal likelihood of deep generative models.
We present a parameteric AIS process with flexible intermediary distributions and optimize the bridging distributions to use fewer number of steps for sampling.
We assess the performance of our optimized AIS for marginal likelihood estimation of deep generative models and compare it to other estimators.
arXiv Detail & Related papers (2022-09-27T07:58:25Z) - Multi-objective hyperparameter optimization with performance uncertainty [62.997667081978825]
This paper presents results on multi-objective hyperparameter optimization with uncertainty on the evaluation of Machine Learning algorithms.
We combine the sampling strategy of Tree-structured Parzen Estimators (TPE) with the metamodel obtained after training a Gaussian Process Regression (GPR) with heterogeneous noise.
Experimental results on three analytical test functions and three ML problems show the improvement over multi-objective TPE and GPR.
arXiv Detail & Related papers (2022-09-09T14:58:43Z) - Enhancing Explainability of Hyperparameter Optimization via Bayesian
Algorithm Execution [13.037647287689438]
We study the combination of HPO with interpretable machine learning (IML) methods such as partial dependence plots.
We propose a modified HPO method which efficiently searches for optimum global predictive performance.
Our method returns more reliable explanations of the underlying black-box without a loss of optimization performance.
arXiv Detail & Related papers (2022-06-11T07:12:04Z) - Using Fitness Dependent Optimizer for Training Multi-layer Perceptron [13.280383503879158]
This study presents a novel training algorithm depending upon the recently proposed Fitness Dependent (FDO)
The stability of this algorithm has been verified and performance-proofed in both the exploration and exploitation stages.
The proposed approach using FDO as a trainer can outperform the other approaches using different trainers on the dataset.
arXiv Detail & Related papers (2022-01-03T10:23:17Z) - Synthesizing multi-layer perceptron network with ant lion,
biogeography-based dragonfly algorithm evolutionary strategy invasive weed
and league champion optimization hybrid algorithms in predicting heating load
in residential buildings [1.370633147306388]
The significance of heating load (HL) accurate approximation is the primary motivation of this research.
The proposed models are through multi-layer perceptron network (MLP) with ant lion optimization (ALO)
Biogeography-based optimization (BBO) featured as the most capable optimization technique, followed by ALO (OS = 27) and ES (OS = 20)
arXiv Detail & Related papers (2021-02-13T14:06:55Z) - Bayesian Optimization with Machine Learning Algorithms Towards Anomaly
Detection [66.05992706105224]
In this paper, an effective anomaly detection framework is proposed utilizing Bayesian Optimization technique.
The performance of the considered algorithms is evaluated using the ISCX 2012 dataset.
Experimental results show the effectiveness of the proposed framework in term of accuracy rate, precision, low-false alarm rate, and recall.
arXiv Detail & Related papers (2020-08-05T19:29:35Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.