A Collection Of The State-of-the-art Metaheuristic Algorithms In Python (Metaheuristic/Optimizer/Nature-inspired/Biology)
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Updated
Sep 3, 2024 - Python
A Collection Of The State-of-the-art Metaheuristic Algorithms In Python (Metaheuristic/Optimizer/Nature-inspired/Biology)
Implement the-state-of-the-art meta-heuristic algorithms using python (numpy)
This toolbox offers 13 wrapper feature selection methods (PSO, GA, GWO, HHO, BA, WOA, and etc.) with examples. It is simple and easy to implement.
This toolbox offers more than 40 wrapper feature selection methods include PSO, GA, DE, ACO, GSA, and etc. They are simple and easy to implement.
Feature Selection using Metaheuristics Made Easy: Open Source MAFESE Library in Python
Harris Hawks Optimization (HHO) is a nature-inspired metaheuristic algorithm that simulates the cooperative hunting behavior of Harris' hawks. Widely used in engineering, machine learning, and resource allocation, HHO is renowned for its simplicity, versatility, and effectiveness in finding global optima.
Harris Hawks Optimization (HHO) - Python Code
The biggest module developed with complete focus on Feature Selection (FS) using Meta-Heuristic Algorithm / Nature-inspired evolutionary / Swarm-based computing.
The binary version of Harris Hawk Optimization (HHO), called Binary Harris Hawk Optimization (BHHO) is applied for feature selection tasks.
Multilevel thresholding segmentation method
An LSTM model optimized with Harris Hawks Optimization (HHO) for customizable time series forecasting using your own dataset
Proposing a novel approach on using Naives Bayes by using Robust Kernel Density Estimation (RKDE) and optimising the bandwith(h) with Harris Hawks Optimization (HHO)
Efficient Time-series Forecasting using Neural Network and Opposition-based Coral Reefs Optimization
Penerapan Harris Hawks Optimization Pada Capacitated Vehicle Routing Problem
Matlab implementation of the article: A secure data hiding approach based on least-significant-bit and nature-inspired optimization techniques
This repository contains the Harris Hawks Optimization code (matlab M-file) for optimizing the benchmark function.
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