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Query efficient posterior estimation in scientific experiments via Bayesian active learning

机译:通过贝叶斯主动学习查询科学实验中的有效后验估计

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摘要

A common problem in disciplines of applied Statistics research such as Astrostatistics is of estimating the posterior distribution of relevant parameters. Typically, the likelihoods for such models are computed via expensive experiments such as cosmological simulations of the universe. An urgent challenge in these research domains is to develop methods that can estimate the posterior with few likelihood evaluations. In this paper, we study active posterior estimation in a Bayesian setting when the likelihood is expensive to evaluate. Existing techniques for posterior estimation are based on generating samples representative of the posterior. Such methods do not consider efficiency in terms of likelihood evaluations. In order to be query efficient we treat posterior estimation in an active regression framework. We propose two myopic query strategies to choose where to evaluate the likelihood and implement them using Gaussian processes. Via experiments on a series of synthetic and real examples we demonstrate that our approach is significantly more query efficient than existing techniques and other heuristics for posterior estimation.
机译:在应用统计研究领域(如天文统计学)中,一个普遍的问题是估计相关参数的后验分布。通常,此类模型的可能性是通过昂贵的实验(例如宇宙的宇宙模拟)计算得出的。在这些研究领域中,迫切的挑战是开发一种可以通过很少的可能性评估来估计后验的方法。在本文中,我们研究了在贝叶斯环境中进行主动后验估计的可能性,因为这种可能性的评估成本很高。用于后验估计的现有技术基于产生代表后验的样本。这样的方法没有根据可能性评估考虑效率。为了提高查询效率,我们在主动回归框架中处理后验估计。我们提出两种近视查询策略,以选择在何处评估可能性并使用高斯过程对其进行实施。通过对一系列综合实例和真实实例的实验,我们证明了我们的方法比现有技术和其他启发式算法在后估计方面的查询效率要高得多。

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