Genetic Algorithm
Genetic algorithms (GAs) are optimization techniques inspired by natural selection, aiming to find optimal or near-optimal solutions for complex problems by iteratively improving a population of candidate solutions. Current research emphasizes enhancing GA efficiency and applicability, focusing on novel selection strategies (e.g., upper bound-based selection), hybrid approaches integrating GAs with deep kernel learning or neural networks, and addressing challenges in high-dimensional spaces and specific problem domains (e.g., the traveling salesman problem, feature selection). These advancements are impacting diverse fields, including drug discovery, wildfire management, and resource allocation, by providing robust and flexible optimization tools for computationally challenging problems.
Papers
Dense Visual Odometry Using Genetic Algorithm
Slimane Djema, Zoubir Abdeslem Benselama, Ramdane Hedjar, Krabi Abdallah
Genetic Algorithm enhanced by Deep Reinforcement Learning in parent selection mechanism and mutation : Minimizing makespan in permutation flow shop scheduling problems
Maissa Irmouli, Nourelhouda Benazzoug, Alaa Dania Adimi, Fatma Zohra Rezkellah, Imane Hamzaoui, Thanina Hamitouche, Malika Bessedik, Fatima Si Tayeb
Modified Genetic Algorithm for Feature Selection and Hyper Parameter Optimization: Case of XGBoost in Spam Prediction
Nazeeh Ghatasheh, Ismail Altaharwa, Khaled Aldebei
Modeling the Telemarketing Process using Genetic Algorithms and Extreme Boosting: Feature Selection and Cost-Sensitive Analytical Approach
Nazeeh Ghatasheh, Ismail Altaharwa, Khaled Aldebei