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A comparison of strategies for Markov chain Monte Carlo computation in quantitative genetics

机译:定量遗传学中马尔可夫链蒙特卡罗计算策略的比较

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摘要

In quantitative genetics, Markov chain Monte Carlo (MCMC) methods are indispensable for statistical inference in non-standard models like generalized linear models with genetic random effects or models with genetically structured variance heterogeneity. A particular challenge for MCMC applications in quantitative genetics is to obtain efficient updates of the high-dimensional vectors of genetic random effects and the associated covariance parameters. We discuss various strategies to approach this problem including reparameterization, Langevin-Hastings updates, and updates based on normal approximations. The methods are compared in applications to Bayesian inference for three data sets using a model with genetically structured variance heterogeneity.
机译:在定量遗传学中,对于非标准模型(如具有遗传随机效应的广义线性模型或具有遗传结构方差异质性的模型)的非标准模型的统计推断,马尔可夫链蒙特卡洛(MCMC)方法是必不可少的。 MCMC在定量遗传学中的应用面临的一个特殊挑战是获得遗传随机效应和相关协方差参数的高维向量的有效更新。我们讨论了解决此问题的各种策略,包括重新参数化,Langevin-Hastings更新以及基于正态近似的更新。使用具有遗传结构方差异质性的模型,将该方法在三个数据集的贝叶斯推断应用中进行了比较。

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