自动化机器学习的约束多目标优化

Steven Gardner, Oleg Golovidov, J. Griffin, P. Koch, W. Thompson, B. Wujek, Yan Xu
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引用次数: 9

摘要

自动化机器学习最近获得了很多关注。构建和选择正确的机器学习模型通常是一个多目标优化问题。同时支持多个目标和约束的通用机器学习软件很少,尽管潜在的好处是巨大的。在这项工作中,我们提出了一个名为Autotune的框架,可以有效地处理机器学习问题中出现的多个目标和约束。Autotune建立在一套无衍生优化方法之上,并利用分布式计算环境中的多级并行性来自动训练、评分和选择良好的模型。在模型探索和选择过程中结合多个目标和约束,提供了满足实际机器学习应用中必要的权衡所需的灵活性。标准多目标优化基准问题的实验结果表明,Autotune在捕获帕累托前沿方面是非常有效的。这些基准测试结果还显示了添加约束如何引导搜索到解决方案空间中更有希望的区域,最终产生更理想的帕累托前沿。两个实际案例研究的结果证明了Autotune提供的约束多目标优化能力的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constrained Multi-Objective Optimization for Automated Machine Learning
Automated machine learning has gained a lot of attention recently. Building and selecting the right machine learning models is often a multi-objective optimization problem. General purpose machine learning software that simultaneously supports multiple objectives and constraints is scant, though the potential benefits are great. In this work, we present a framework called Autotune that effectively handles multiple objectives and constraints that arise in machine learning problems. Autotune is built on a suite of derivative-free optimization methods, and utilizes multi-level parallelism in a distributed computing environment for automatically training, scoring, and selecting good models. Incorporation of multiple objectives and constraints in the model exploration and selection process provides the flexibility needed to satisfy trade-offs necessary in practical machine learning applications. Experimental results from standard multi-objective optimization benchmark problems show that Autotune is very efficient in capturing Pareto fronts. These benchmark results also show how adding constraints can guide the search to more promising regions of the solution space, ultimately producing more desirable Pareto fronts. Results from two real-world case studies demonstrate the effectiveness of the constrained multi-objective optimization capability offered by Autotune.
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