结合实验者直觉加速实验设计

Cheng Li, Santu Rana, Sunil Gupta, Vu Nguyen, S. Venkatesh, A. Sutti, D. R. Leal, Teo Slezak, Murray Height, M. Mohammed, I. Gibson
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引用次数: 23

摘要

实验设计是通过实验获得具有目标性能的产品的过程。当实验成本较高时,贝叶斯优化为实验设计提供了一种有效的工具。通常,专业的实验人员对实验系统的行为有“预感”,提供进一步提高效率的潜力。在本文中,我们考虑单变量单调趋势的潜在性质,导致单峰趋势的那些变量的目标值优化。例如,糖果的甜度与含糖量是单调的。然而,为了获得目标甜度,糖含量的效用变成了一个单峰函数,它在给出目标甜度的值时达到峰值,然后在两个方向上都下降。在本文中,我们提出了一种新的方法来解决这类问题,达到两个主要目标:a)最大限度地利用单调性信息,同时保证b)收敛保证不变。这是通过两阶段高斯过程建模来实现的,其中第一阶段使用单调性趋势来建模底层属性,第二阶段使用从第一阶段采样的“虚拟”样本来建模目标值优化函数。通过在后验计算中添加适当的调整因子,该过程在理论上是一致的,因为使用“虚拟”样本是必要的。通过模拟和现实世界的实验设计问题对所提出的方法进行了评估,a)具有目标长度的新型短聚合物纤维,b)具有目标孔隙率的新型三维多孔支架的设计。在所有情况下,我们的方法都比不使用这种“预感”的基本贝叶斯优化方法收敛得更快。
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Accelerating Experimental Design by Incorporating Experimenter Hunches
Experimental design is a process of obtaining a product with target property via experimentation. Bayesian optimization offers a sample-efficient tool for experimental design when experiments are expensive. Often, expert experimenters have 'hunches' about the behavior of the experimental system, offering potentials to further improve the efficiency. In this paper, we consider per-variable monotonic trend in the underlying property that results in a unimodal trend in those variables for a target value optimization. For example, sweetness of a candy is monotonic to the sugar content. However, to obtain a target sweetness, the utility of the sugar content becomes a unimodal function, which peaks at the value giving the target sweetness and falls off both ways. In this paper, we propose a novel method to solve such problems that achieves two main objectives: a) the monotonicity information is used to the fullest extent possible, whilst ensuring that b) the convergence guarantee remains intact. This is achieved by a two-stage Gaussian process modeling, where the first stage uses the monotonicity trend to model the underlying property, and the second stage uses 'virtual' samples, sampled from the first, to model the target value optimization function. The process is made theoretically consistent by adding appropriate adjustment factor in the posterior computation, necessitated because of using the 'virtual' samples. The proposed method is evaluated through both simulations and real world experimental design problems of a) new short polymer fiber with the target length, and b) designing of a new three dimensional porous scaffolding with a target porosity. In all scenarios our method demonstrates faster convergence than the basic Bayesian optimization approach not using such 'hunches'.
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