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Learning Functions and Approximate Bayesian Computation Design: ABCD

机译:学习功能和近似贝叶斯计算设计:ABCD

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摘要

A general approach to Bayesian learning revisits some classical results, which study which functionals on a prior distribution are expected to increase, in a preposterior sense. The results are applied to information functionals of the Shannon type and to a class of functionals based on expected distance. A close connection is made between the latter and a metric embedding theory due to Schoenberg and others. For the Shannon type, there is a connection to majorization theory for distributions. A computational method is described to solve generalized optimal experimental design problems arising from the learning framework based on a version of the well-known approximate Bayesian computation (ABC) method for carrying out the Bayesian analysis based on Monte Carlo simulation. Some simple examples are given.
机译:贝叶斯学习的一种通用方法是回顾一些经典的结果,这些结果研究了在先验意义上预期先验分布上的哪些功能会增加。结果将应用于Shannon类型的信息功能以及基于预期距离的一类功能。后者与Schoenberg等人的度量嵌入理论之间有着密切的联系。对于香农类型,与分布的主化理论有联系。描述了一种计算方法,用于解决基于基于蒙特卡洛模拟进行贝叶斯分析的著名近似贝叶斯计算(ABC)方法版本而导致的由学习框架引起的广义最优实验设计问题。给出一些简单的例子。

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