Affiliation:
1. School of Information Science and Engineering, Lanzhou University, Lanzhou 730000, China
Abstract
Extreme learning machines (ELMs), single hidden-layer feedforward neural networks, are renowned for their speed and efficiency in classification and regression tasks. However, their generalization ability is often undermined by the random generation of hidden layer weights and biases. To address this issue, this paper introduces a Hierarchical Learning-based Chaotic Crayfish Optimization Algorithm (HLCCOA) aimed at enhancing the generalization ability of ELMs. Initially, to resolve the problems of slow search speed and premature convergence typical of traditional crayfish optimization algorithms (COAs), the HLCCOA utilizes chaotic sequences for population position initialization. The ergodicity of chaos is leveraged to boost population diversity, laying the groundwork for effective global search efforts. Additionally, a hierarchical learning mechanism encourages under-performing individuals to engage in extensive cross-layer learning for enhanced global exploration, while top performers directly learn from elite individuals at the highest layer to improve their local exploitation abilities. Rigorous testing with CEC2019 and CEC2022 suites shows the HLCCOA’s superiority over both the original COA and nine renowned heuristic algorithms. Ultimately, the HLCCOA-optimized extreme learning machine model, the HLCCOA-ELM, exhibits superior performance over reported benchmark models in terms of accuracy, sensitivity, and specificity for UCI breast cancer diagnosis, underscoring the HLCCOA’s practicality and robustness, as well as the HLCCOA-ELM’s commendable generalization performance.
Reference68 articles.
1. Greylag Goose Optimization: Nature-inspired optimization algorithm;Khodadadi;Expert Syst. Appl.,2024
2. Performance assessment of the metaheuristic optimization algorithms: An exhaustive review;Halim;Artif. Intell. Rev.,2021
3. Sang, Y., Tan, J., and Liu, W. (2024). Research on Many-Objective Flexible Job Shop A Modified Sand Cat Swarm Optimization Algorithm Based on Multi-Strategy Fusion and Its Application in Engineering Problems. Mathematics, 12.
4. Dung beetle optimization algorithm based on quantum computing and multi-strategy fusion for solving engineering problems;Zhu;Expert Syst. Appl.,2024
5. Optimal solution of the combined heat and power economic dispatch problem by adaptive fitness-distance balance based artificial rabbits optimization algorithm;Ozkaya;Expert Syst. Appl.,2024