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Bayesian estimation and hypothesis tests for a circular Generalized Linear Model

机译:循环广义线性模型的贝叶斯估计和假设试验

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摘要

Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular data within the Bayesian framework, using the von Mises distribution. Although circular data arise in a wide variety of scientific fields, the number of methods for their analysis is limited. Our model allows inclusion of both continuous and categorical covariates. In a frequentist setting, this type of model is plagued by the likelihood surface of its regression coefficients, which is not logarithmically concave. In a Bayesian context, a weakly informative prior solves this issue, while for other parameters noninformative priors are available. In addition to an MCMC sampling algorithm, we develop Bayesian hypothesis tests based on the Bayes factor for both equality and inequality constrained hypotheses. In a simulation study, it can be seen that our method performs well. The analyses are available in the package CircGLMBayes. Finally, we apply this model to a dataset from experimental psychology, and show that it provides valuable insight for applied researchers. Extensions to dependent observations are within reach by means of the multivariate von Mises distribution. (C) 2017 Elsevier Inc. All rights reserved.
机译:受认知心理学研究的启发,我们使用冯·米塞斯分布,在贝叶斯框架内建立了循环数据的广义线性模型。尽管循环数据出现在各种各样的科学领域,但分析它们的方法数量有限。我们的模型允许包含连续和分类协变量。在频率设置中,这类模型受到其回归系数的似然曲面的困扰,该曲面不是对数凹的。在贝叶斯上下文中,弱信息先验解决了这个问题,而对于其他参数,非信息先验是可用的。除了MCMC抽样算法外,我们还基于等式和不等式约束假设的贝叶斯因子开发了贝叶斯假设检验。在模拟研究中,可以看出我们的方法表现良好。这些分析可在CircGLMBayes软件包中找到。最后,我们将该模型应用于实验心理学的一个数据集,并表明它为应用研究人员提供了有价值的见解。通过多元von Mises分布,相关观测的扩展是可以实现的。(C) 2017爱思唯尔公司版权所有。

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