Balancing Exploration and Exploitation in Multiobjective Batch Bayesian Optimization

摘要

Many applications such as hyper-parameter tunning in Machine Learning can be casted to multiobjective black-box problems and it is challenging to optimize them. Bayesian Optimization (BO) is an effective method to deal with black-box functions. This paper mainly focuses on balancing exploration and exploitation in multi-objective black-box optimization problems by multiple samplings in BBO. In each iteration, multiple recommendations are generated via two different trade-off strategies respectively the expected improvement (EI) and a multiobjective framework with the mean and variance function of the GP posterior forming two conflict objectives. We compare our algorithm with ParEGO by running on 12 test functions. Hypervolume (HV, also known as S-metric) results show that our algorithm works well in exploration-exploitation trade-off for multiobjective black-box optimization problems.

出版物
Proceedings of the Genetic and Evolutionary Computation Conference Companion
王洪燕
王洪燕
博士研究生

我的研究方向为进化计算和贝叶斯优化。

徐华
徐华
长聘副教授, Expert Systems with Application 副主编,博士生导师
袁源
博士

2010年进组,2015年获得博士学位。

孙晓民
孙晓民
副教授,硕士生导师
邓俊辉
邓俊辉
教授,硕士生导师

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