Hyperparameter Search for Machine Learning Algorithms for Optimizing the Computational Complexity 论文

2023Processes引用 287
Machine Learning and Data ClassificationMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization Algorithms

详细信息

发表期刊/会议
Processes
发表日期
2023-01-21
发表年份
2023

关键词

Machine Learning and Data ClassificationMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization Algorithms

摘要

For machine learning algorithms, fine-tuning hyperparameters is a computational challenge due to the large size of the problem space. An efficient strategy for adjusting hyperparameters can be established with the use of the greedy search and Swarm intelligence algorithms. The Random Search and Grid Search optimization techniques show promise and efficiency for this task. The small population of solutions used at the outset, and the costly goal functions used by these searches, can lead to slow convergence or execution time in some cases. In this research, we propose using the machine learning model known as Support Vector Machine and optimizing it using four distinct algorithms—the Ant Bee Colony Algorithm, the Genetic Algorithm, the Whale Optimization, and the Particle Swarm Optimization—to evaluate the computational cost of SVM after hyper-tuning. Computational complexity comparisons of these optimization algorithms were performed to determine the most effective strategies for hyperparameter tuning. It was found that the Genetic Algorithm had a lower temporal complexity than other algorithms.