Use Model Averaging instead of Model Selection in Pulsar Timing

Rutger van Haasteren
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Abstract

Over the past decade and a half, adoption of Bayesian inference in pulsar timing analysis has led to increasingly sophisticated models. The recent announcement of evidence for a stochastic background of gravitational waves by various pulsar timing array projects highlighted Bayesian inference as a central tool for parameter estimation and model selection. Despite its success, Bayesian inference is occasionally misused in the pulsar timing community. A common workflow is that the data is analyzed in multiple steps: a first analysis of single pulsars individually, and a subsequent analysis of the whole array of pulsars. A mistake that is then sometimes introduced stems from using the posterior distribution to craft the prior for the analysis of the same data in a second step, a practice referred to in the statistics literature as ``circular analysis.'' This is done to prune the model for computational efficiency. Multiple recent high-profile searches for gravitational waves by pulsar timing array (PTA) projects have this workflow. This letter highlights this error and suggests that Spike and Slab priors can be used to carry out model averaging instead of model selection in a single pass. Spike and Slab priors are proved to be equal to Log-Uniform priors.
在脉冲星计时中使用模型平均法而不是模型选择法
在过去的十五年里,在脉冲定时分析中采用贝叶斯推断法已经产生了越来越复杂的模型。最近,多个脉冲星定时阵列项目公布了引力波随机背景的证据,这凸显了贝叶斯推理是参数估计和模型选择的核心工具。尽管贝叶斯推断法很成功,但在脉冲星定时领域偶尔会被误用。常见的工作流程是分多个步骤分析数据:首先分析单个脉冲星,然后分析整个脉冲星阵列。这种做法在统计学文献中被称为 "循环分析"。这样做是为了剪裁模型,以提高计算效率。最近多个引人瞩目的脉冲定时阵列(PTA)引力波搜索项目都采用了这种工作流程。这封信强调了这一错误,并建议使用 Spike 和 Slab 先验来进行模型平均,而不是一次性进行模型选择。事实证明,Spike 和 Slab 先验等同于 Log-Uniform 先验。
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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