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Bayesian Optimization with Dimension Scheduling: Application to Biological Systems

机译:基于维度调度的贝叶斯优化算法在生物系统中的应用

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摘要

Bayesian Optimization (BO) is a data-efficient method for global black-box optimization of an expensive-to-evaluate fitness function. BO typically assumes that computation cost of BO is cheap, but experiments are time consuming or costly. In practice, this allows us to optimize ten or fewer critical parameters in up to 1,000 experiments. But experiments may be less expensive than BO methods assume: In some simulation models, we may be able to conduct multiple thousands of experiments in a few hours, and the computational burden of BO is no longer negligible compared to experimentation time. To address this challenge we introduce a new Dimension Scheduling Algorithm (DSA), which reduces the computational burden of BO for many experiments. The key idea is that DSA optimizes the fitness function only along a small set of dimensions at each iteration. This DSA strategy (1) reduces the necessary computation time, (2) finds good solutions faster than the traditional BO method, and (3) can be parallelized straightforwardly. We evaluate the DSA in the context of optimizing parameters of dynamic models of microalgae metabolism and show faster convergence than traditional BO.
机译:贝叶斯优化(BO)是一种数据有效的方法,用于对昂贵的,要评估的适应度函数进行全局黑盒优化。 BO通常假定BO的计算成本便宜,但是实验既费时又费钱。实际上,这使我们可以在多达1,000个实验中优化10个或更少的关键参数。但是实验可能比BO方法假定的要便宜:在某些仿真模型中,我们也许可以在几个小时内进行数千次实验,并且与实验时间相比,BO的计算负担不再可以忽略不计。为了解决这一挑战,我们引入了一种新的维度调度算法(DSA),该算法可减少许多实验中BO的计算负担。关键思想是DSA仅在每次迭代时沿一小部分维度优化适应度函数。这种DSA策略(1)减少了必要的计算时间,(2)比传统的BO方法更快地找到了好的解决方案,并且(3)可以直接并行化。我们在优化微藻代谢动力学模型参数的背景下评估了DSA,并显示出比传统BO更快的收敛速度。

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