Priyadarshini Ishaani
School of Information, University of California, Berkeley, CA 94720, USA.
Biomimetics (Basel). 2024 Feb 21;9(3):130. doi: 10.3390/biomimetics9030130.
In numerous scientific disciplines and practical applications, addressing optimization challenges is a common imperative. Nature-inspired optimization algorithms represent a highly valuable and pragmatic approach to tackling these complexities. This paper introduces Dendritic Growth Optimization (DGO), a novel algorithm inspired by natural branching patterns. DGO offers a novel solution for intricate optimization problems and demonstrates its efficiency in exploring diverse solution spaces. The algorithm has been extensively tested with a suite of machine learning algorithms, deep learning algorithms, and metaheuristic algorithms, and the results, both before and after optimization, unequivocally support the proposed algorithm's feasibility, effectiveness, and generalizability. Through empirical validation using established datasets like diabetes and breast cancer, the algorithm consistently enhances model performance across various domains. Beyond its working and experimental analysis, DGO's wide-ranging applications in machine learning, logistics, and engineering for solving real-world problems have been highlighted. The study also considers the challenges and practical implications of implementing DGO in multiple scenarios. As optimization remains crucial in research and industry, DGO emerges as a promising avenue for innovation and problem solving.
在众多科学学科和实际应用中,应对优化挑战是一项常见的必要任务。受自然启发的优化算法是解决这些复杂性问题的一种极具价值且务实的方法。本文介绍了树枝状生长优化算法(DGO),这是一种受自然分支模式启发的新型算法。DGO为复杂的优化问题提供了一种新颖的解决方案,并展示了其在探索不同解空间方面的效率。该算法已与一系列机器学习算法、深度学习算法和元启发式算法进行了广泛测试,优化前后的结果明确支持了所提出算法的可行性、有效性和通用性。通过使用糖尿病和乳腺癌等既定数据集进行实证验证,该算法在各个领域持续提升模型性能。除了其工作原理和实验分析之外,还强调了DGO在机器学习、物流和工程领域解决实际问题的广泛应用。该研究还考虑了在多种场景中实施DGO所面临的挑战和实际影响。由于优化在研究和行业中仍然至关重要,DGO成为创新和解决问题的一条有前途的途径。