幸存者问题继续:介绍贝叶斯模型选择

T. Donovan, R. Mickey
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引用次数: 0

摘要

本章简要介绍了贝叶斯模型选择。本章对“幸存者问题”进行了扩展,重点是比较两种预测选手在“幸存者”游戏中能坚持多久的模型:一种模型使用正规教育年限作为预测指标,另一种模型使用毅力作为预测指标。Gibbs抽样用于参数估计。偏差信息标准(通常缩写为DIC)被用作模型选择的指南。描述了如何计算该度量的细节。本章还讨论了模型评估(模型拟合)和奥卡姆剃刀。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Survivor Problem Continued: Introduction to Bayesian Model Selection
This chapter provides a very brief introduction to Bayesian model selection. The “Survivor Problem” is expanded in this chapter, where the focus is now on comparing two models that predict how long a contestant will last in a game of Survivor: one model uses years of formal education as a predictor, and a second model uses grit as a predictor. Gibbs sampling is used for parameter estimation. Deviance Information Criterion (commonly abbreviated as DIC) is used as a guide for model selection. Details of how this measure is computed are described. The chapter also discusses model assessment (model fit) and Occam’s razor.
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