The Maple Syrup Problem: The Normal-Normal Conjugate

T. Donovan, R. Mickey
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Abstract

In this chapter, Bayesian methods are used to estimate the two parameters that identify a normal distribution, μ‎ and σ‎. Many Bayesian analyses consider alternative parameter values as hypotheses. The prior distribution for an unknown parameter can be represented by a continuous probability density function when the number of hypotheses is infinite. In the “Maple Syrup Problem,” a normal distribution is used as the prior distribution of μ‎, the mean number of millions of gallons of maple syrup produced in Vermont in a year. The amount of syrup produced in multiple years is determined, and assumed to follow a normal distribution with known σ‎. The prior distribution is updated to the posterior distribution in light of this new information. In short, a normal prior distribution + normally distributed data → normal posterior distribution.
枫糖浆问题:正常-正常共轭
在本章中,我们使用贝叶斯方法来估计标识正态分布的两个参数,μ和σ。许多贝叶斯分析将可选参数值作为假设。当假设数目为无穷大时,未知参数的先验分布可以用连续概率密度函数表示。在“枫糖浆问题”中,正态分布被用作μ的先验分布,μ是佛蒙特州每年生产的数百万加仑枫糖浆的平均数量。确定多年生产的糖浆量,并假设遵循已知σ _()的正态分布。根据这些新信息,先验分布被更新为后验分布。简而言之,正态先验分布+正态数据分布→正态后验分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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