Expected Regret Minimization for Bayesian Optimization with Student's-t Processes

Conor Clare, G. Hawe, S. McClean
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引用次数: 2

Abstract

Student's-t Processes were recently proposed as a probabilistic alternative to Gaussian Processes for Bayesian optimization. Student's-t Processes are a generalization of Gaussian Processes, using an extra parameter v, which addresses Gaussian Processes' weaknesses. Separately, recent work used prior knowledge of a black-box function's global optimum f*, to create a new acquisition function for Bayesian optimization called Expected Regret Minimization. Gaussian Processes were then combined with Expected Regret Minimization to outperform existing models for Bayesian optimization. No published work currently exists for Expected Regret Minimization with Student's-t Processes. This research compares Expected Regret Minimization for Bayesian optimization, using Student's-t Processes versus Gaussian Processes. Both models are applied to four problems popular in mathematical optimization. Our work enhances Bayesian optimization by showing superior training regret minimization for Expected Regret Minimization, using Student's-t Processes versus Gaussian Processes.
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期望遗憾最小化与学生t过程贝叶斯优化
学生t过程最近被提出作为一个概率替代高斯过程用于贝叶斯优化。学生t过程是高斯过程的泛化,使用了一个额外的参数v,它解决了高斯过程的弱点。另外,最近的工作使用黑盒函数的全局最优f*的先验知识,为贝叶斯优化创建了一个新的获取函数,称为预期遗憾最小化。然后将高斯过程与期望遗憾最小化相结合,以优于现有的贝叶斯优化模型。目前还没有发表的关于使用学生t过程最小化预期遗憾的工作。本研究比较了期望遗憾最小化的贝叶斯优化,使用学生t过程和高斯过程。这两种模型应用于数学优化中的四个常见问题。我们的工作通过使用Student's-t过程与高斯过程对比,展示了预期遗憾最小化的卓越训练遗憾最小化,从而增强了贝叶斯优化。
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