AutoML in heavily constrained applications

Felix Neutatz, Marius Lindauer, Ziawasch Abedjan
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引用次数: 0

Abstract

Optimizing a machine learning pipeline for a task at hand requires careful configuration of various hyperparameters, typically supported by an AutoML system that optimizes the hyperparameters for the given training dataset. Yet, depending on the AutoML system’s own second-order meta-configuration, the performance of the AutoML process can vary significantly. Current AutoML systems cannot automatically adapt their own configuration to a specific use case. Further, they cannot compile user-defined application constraints on the effectiveness and efficiency of the pipeline and its generation. In this paper, we propose Caml, which uses meta-learning to automatically adapt its own AutoML parameters, such as the search strategy, the validation strategy, and the search space, for a task at hand. The dynamic AutoML strategy of Caml takes user-defined constraints into account and obtains constraint-satisfying pipelines with high predictive performance.

Abstract Image

在严格约束的应用程序中的自动化
为手头的任务优化机器学习管道需要仔细配置各种超参数,通常由为给定训练数据集优化超参数的AutoML系统支持。然而,根据AutoML系统自己的二阶元配置,AutoML过程的性能可能会有很大的不同。当前的AutoML系统不能自动调整自己的配置以适应特定的用例。此外,它们不能对管道及其生成的有效性和效率编译用户定义的应用程序约束。在本文中,我们提出了Caml,它使用元学习来自动调整自己的AutoML参数,如搜索策略、验证策略和搜索空间,以完成手头的任务。Caml的动态AutoML策略考虑了用户自定义约束,获得了具有高预测性能的满足约束的管道。
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