新闻

新闻资讯

联系我们

联系人:陈先生

手机:13888889999

电话:020-88888888

邮箱:youweb@126.com

地址:广东省广州市番禺经济开发区

常见问题

部分强化优化器:一种进化优化算法,Expert Systems with Applications

作者:佚名 发布时间:2024-05-26 09:07:12

Partial reinforcement optimizer: An evolutionary optimization algorithm

In this paper, a novel evolutionary optimization algorithm, named Partial Reinforcement Optimizer (PRO), is introduced. The major idea behind the PRO comes from a psychological theory in evolutionary learning and training called the partial reinforcement effect (PRE) theory. According to the PRE theory, a learner is intermittently reinforced to learn or strengthen a specific behavior during the learning and training process. The reinforcement patterns significantly impact the response rate and strength of the learner during a reinforcement schedule, achieved by appropriately selecting a reinforcement behavior and the time of applying reinforcement process. In the PRO algorithm, the PRE theory is mathematically modeled to an evolutionary optimization algorithm for solving global optimization problems. The efficiency of the proposed PRO algorithm is compared to well-known Meta-heuristic Algorithms (MAs) using Wilcoxon and Friedman statistical tests to analyze results from 75 benchmarks of the CEC2005, CEC2014, and CEC-BC-2017 test suits, which include unimodal, multimodal, hybrid, and composition functions. Additionally, the proposed PRO algorithm is applied to optimize a Federated Deep Learning Electrocardiography (ECG) classifier, as a real case study, to investigate the robustness and applicability of the proposed PRO. The experimental results demonstrate that the PRO algorithm outperforms existing meta-heuristic optimization algorithms by providing a more accurate and robust solution.

相关标签:

新闻资讯

相关产品

在线客服
联系方式

热线电话

020-88888888

上班时间

周一到周五

公司电话

13888889999

二维码
线

平台注册入口