Autotune: A Derivative-free Optimization Framework for Hyperparameter Tuning

被引:67
作者
Koch, Patrick [1 ]
Golovidov, Oleg [1 ]
Gardner, Steven [1 ]
Wujek, Brett [1 ]
Griffin, Joshua [1 ]
Xu, Yan [1 ]
机构
[1] SAS Inst Inc, Cary, NC 27513 USA
来源
KDD'18: PROCEEDINGS OF THE 24TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING | 2018年
关键词
Derivative-free Optimization; Stochastic Optimization; Bayesian Optimization; Hyperparameters; Distributed Computing System; SEARCH;
D O I
10.1145/3219819.3219837
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Machine learning applications often require hyperparameter tuning. The hyperparameters usually drive both the efficiency of the model training process and the resulting model quality. For hyperparameter tuning, machine learning algorithms are complex black-boxes. This creates a class of challenging optimization problems, whose objective functions tend to be nonsmooth, discontinuous, unpredictably varying in computational expense, and include continuous, categorical, and/or integer variables. Further, function evaluations can fail for a variety of reasons including numerical difficulties or hardware failures. Additionally, not all hyperparameter value combinations are compatible, which creates so called hidden constraints. Robust and efficient optimization algorithms are needed for hyper-parameter tuning. In this paper we present an automated parallel derivative-free optimization framework called Autotune, which combines a number of specialized sampling and search methods that are very effective in tuning machine learning models despite these challenges. Autotune provides significantly improved models over using default hyperparameter settings with minimal user interaction on real-world applications. Given the inherent expense of training numerous candidate models, we demonstrate the effectiveness of Autotune's search methods and the efficient distributed and parallel paradigms for training and tuning models, and also discuss the resource trade-offs associated with the ability to both distribute the training process and parallelize the tuning process.
引用
收藏
页码:443 / 452
页数:10
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