论文标题
贝叶斯优化以积极吸引的专家知识增强
Bayesian Optimization Augmented with Actively Elicited Expert Knowledge
论文作者
论文摘要
贝叶斯优化(BO)是一种良好的方法,可以优化直接评估成本高昂的黑框函数。在本文中,我们解决了将专家知识纳入BO的问题,目的是进一步加速优化,到目前为止,该优化几乎没有得到关注。我们为这项任务设计了多任务学习体系结构,目的是共同吸引专家知识并最大程度地降低目标功能。特别是,这允许将专家知识转移到BO任务中。我们介绍了基于暹罗神经网络的特定体系结构,以处理来自成对查询的知识启发。具有模拟和实际人类专家的各种基准功能的实验表明,即使与目标函数相比,该建议的方法也会显着加快BO的速度。
Bayesian optimization (BO) is a well-established method to optimize black-box functions whose direct evaluations are costly. In this paper, we tackle the problem of incorporating expert knowledge into BO, with the goal of further accelerating the optimization, which has received very little attention so far. We design a multi-task learning architecture for this task, with the goal of jointly eliciting the expert knowledge and minimizing the objective function. In particular, this allows for the expert knowledge to be transferred into the BO task. We introduce a specific architecture based on Siamese neural networks to handle the knowledge elicitation from pairwise queries. Experiments on various benchmark functions with both simulated and actual human experts show that the proposed method significantly speeds up BO even when the expert knowledge is biased compared to the objective function.