机器学习优化技术:调查、分类、挑战和未来研究课题

IF 9.7 2区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Kewei Bian, Rahul Priyadarshi
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引用次数: 0

摘要

机器学习(ML)中的优化方法对于训练模型以在众多领域获得高性能至关重要。本文全面概述了机器学习的优化策略,强调了它们的分类、障碍和有待进一步研究的潜在领域。接下来,我们将研究优化方法的历史进程,强调重要的发展及其对当代算法的影响。我们分析了当前的研究,以确定广泛的优化算法及其在监督学习、无监督学习和强化学习中的应用。我们还探讨了各种常见的优化约束,包括非凸性、可扩展性问题、收敛问题以及对鲁棒性和泛化的关注。我们建议未来的研究应侧重于可扩展性问题、创新优化技术、领域知识整合以及提高可解释性。本研究旨在结合历史进展、文献评价和当前问题的见解,对 ML 优化进行深入评述,以指导未来的研究工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Optimization Techniques: A Survey, Classification, Challenges, and Future Research Issues

Optimization approaches in machine learning (ML) are essential for training models to obtain high performance across numerous domains. The article provides a comprehensive overview of ML optimization strategies, emphasizing their classification, obstacles, and potential areas for further study. We proceed with studying the historical progression of optimization methods, emphasizing significant developments and their influence on contemporary algorithms. We analyse the present research to identify widespread optimization algorithms and their uses in supervised learning, unsupervised learning, and reinforcement learning. Various common optimization constraints, including non-convexity, scalability issues, convergence problems, and concerns about robustness and generalization, are also explored. We suggest future research should focus on scalability problems, innovative optimization techniques, domain knowledge integration, and improving interpretability. The present study aims to provide an in-depth review of ML optimization by combining insights from historical advancements, literature evaluations, and current issues to guide future research efforts.

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来源期刊
CiteScore
19.80
自引率
4.10%
发文量
153
审稿时长
>12 weeks
期刊介绍: Archives of Computational Methods in Engineering Aim and Scope: Archives of Computational Methods in Engineering serves as an active forum for disseminating research and advanced practices in computational engineering, particularly focusing on mechanics and related fields. The journal emphasizes extended state-of-the-art reviews in selected areas, a unique feature of its publication. Review Format: Reviews published in the journal offer: A survey of current literature Critical exposition of topics in their full complexity By organizing the information in this manner, readers can quickly grasp the focus, coverage, and unique features of the Archives of Computational Methods in Engineering.
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