Active Data Selection and Information Seeking

Algorithms Pub Date : 2024-03-12 DOI:10.3390/a17030118
Thomas Parr, K. Friston, P. Zeidman
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Abstract

Bayesian inference typically focuses upon two issues. The first is estimating the parameters of some model from data, and the second is quantifying the evidence for alternative hypotheses—formulated as alternative models. This paper focuses upon a third issue. Our interest is in the selection of data—either through sampling subsets of data from a large dataset or through optimising experimental design—based upon the models we have of how those data are generated. Optimising data-selection ensures we can achieve good inference with fewer data, saving on computational and experimental costs. This paper aims to unpack the principles of active sampling of data by drawing from neurobiological research on animal exploration and from the theory of optimal experimental design. We offer an overview of the salient points from these fields and illustrate their application in simple toy examples, ranging from function approximation with basis sets to inference about processes that evolve over time. Finally, we consider how this approach to data selection could be applied to the design of (Bayes-adaptive) clinical trials.
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主动数据选择和信息搜索
贝叶斯推理通常关注两个问题。第一个问题是从数据中估计某个模型的参数,第二个问题是量化作为替代模型的替代假设的证据。本文关注第三个问题。我们感兴趣的是数据的选择--无论是通过从大型数据集中抽取数据子集,还是通过基于我们所掌握的数据生成模型优化实验设计。优化数据选择可确保我们用较少的数据实现良好的推断,从而节省计算和实验成本。本文旨在从动物探索的神经生物学研究和最优实验设计理论出发,解读数据主动采样的原理。我们概述了这些领域的要点,并以简单的玩具示例说明了这些要点的应用,从使用基集进行函数逼近到推断随时间演变的过程。最后,我们还考虑了如何将这种数据选择方法应用于(贝叶斯自适应)临床试验的设计。
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