论文标题
投影优先的贝叶斯优化
Projective Preferential Bayesian Optimization
论文作者
论文摘要
贝叶斯优化是找到黑盒功能极值的有效方法。我们提出了一种新型的贝叶斯优化,以在高维空间中学习用户偏好。中心假设是无法直接评估基础目标函数,而是可以查询沿投影的最小化器,我们称之为投影优先查询。查询的形式允许人类提供自然的反馈,并且可以互动。这在用户实验中证明了这一点,在该实验中,用户反馈以最佳位置和分子吸附到表面的方向的形式出现。我们证明我们的框架能够找到高维黑框功能的全局最低最小值,这对于基于成对比较的现有优先贝叶斯优化框架来说是一项不可行的任务。
Bayesian optimization is an effective method for finding extrema of a black-box function. We propose a new type of Bayesian optimization for learning user preferences in high-dimensional spaces. The central assumption is that the underlying objective function cannot be evaluated directly, but instead a minimizer along a projection can be queried, which we call a projective preferential query. The form of the query allows for feedback that is natural for a human to give, and which enables interaction. This is demonstrated in a user experiment in which the user feedback comes in the form of optimal position and orientation of a molecule adsorbing to a surface. We demonstrate that our framework is able to find a global minimum of a high-dimensional black-box function, which is an infeasible task for existing preferential Bayesian optimization frameworks that are based on pairwise comparisons.