Transfer Learning for Bayesian Optimization with Principal Component Analysis

Hideyuki Masui, D. Romeres, D. Nikovski
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Abstract

Bayesian Optimization has been widely used for black-box optimization. Especially in the field of machine learning, BO has obtained remarkable results in hyperparameters optimization. However, the best hyperparameters depend on the specific task and traditionally the BO algorithm needs to be repeated for each task. On the other hand, the relationship between hyperparameters and objectives has similar tendency among tasks. Therefore, transfer learning is an important technology to accelerate the optimization of novel task by leveraging the knowledge acquired in prior tasks. In this work, we propose a new transfer learning strategy for BO. We use information geometry based principal component analysis (PCA) to extract a low-dimension manifold from a set of Gaussian process (GP) posteriors that models the objective functions of the prior tasks. Then, the low dimensional parameters of this manifold can be optimized to adapt to a new task and set a prior distribution for the objective function of the novel task. Experiments on hyperparameters optimization benchmarks show that our proposed algorithm, called BO-PCA, accelerates the learning of an unseen task (less data are required) while having low computational cost.
基于主成分分析的贝叶斯优化迁移学习
贝叶斯优化被广泛应用于黑盒优化。特别是在机器学习领域,BO在超参数优化方面取得了显著的成果。然而,最佳的超参数依赖于特定的任务,传统的BO算法需要对每个任务重复。另一方面,任务间的超参数与目标的关系也有类似的趋势。因此,迁移学习是利用在先前任务中获得的知识来加速新任务优化的重要技术。在这项工作中,我们提出了一种新的迁移学习策略。我们使用基于信息几何的主成分分析(PCA)从一组高斯过程(GP)后验中提取低维流形,这些后验建模了先验任务的目标函数。然后,优化流形的低维参数以适应新任务,并为新任务的目标函数设定先验分布。在超参数优化基准上的实验表明,我们提出的BO-PCA算法在计算成本低的同时加速了对未知任务的学习(所需的数据更少)。
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