分布式回归模型的交互式可视化

IF 1.2 4区 数学 Q2 STATISTICS & PROBABILITY Statistical Modelling Pub Date : 2021-05-27 DOI:10.1177/1471082X211007308
Stanislaus Stadlmann, T. Kneib
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引用次数: 4

摘要

统计学中一个新兴的领域是分布回归,其中不仅可以使用一组预测因子对参数响应分布的平均值,而且可以对每个参数进行建模。作为广义加性模型的扩展,分布回归利用了已知的链接函数(log、logit等)、模型项(固定、随机、空间、光滑等)和可用的分布类型,但使我们能够远远超越指数族,并对潜在的所有分布参数进行建模。由于模型灵活性的增加,与传统的基于均值的方法相比,对条件响应分布形状、其矩和从该分布导出的其他特征的协变效应的解释更具挑战性。特别是,这些感兴趣的量通常不会直接等同于建模参数,而是它们的(潜在的复杂)组合。为了简化估计后模型分析,我们提出了一个框架,并随后在R中实现,用于使用bamlss、gamlss和betareg R包拟合的贝叶斯和频率分布回归模型的可视化。
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Interactively visualizing distributional regression models with distreg.vis
A newly emerging field in statistics is distributional regression, where not only the mean but each parameter of a parametric response distribution can be modelled using a set of predictors. As an extension of generalized additive models, distributional regression utilizes the known link functions (log, logit, etc.), model terms (fixed, random, spatial, smooth, etc.) and available types of distributions but allows us to go well beyond the exponential family and to model potentially all distributional parameters. Due to this increase in model flexibility, the interpretation of covariate effects on the shape of the conditional response distribution, its moments and other features derived from this distribution is more challenging than with traditional mean-based methods. In particular, such quantities of interest often do not directly equate the modelled parameters but are rather a (potentially complex) combination of them. To ease the post-estimation model analysis, we propose a framework and subsequently feature an implementation in R for the visualization of Bayesian and frequentist distributional regression models fitted using the bamlss, gamlss and betareg R packages.
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来源期刊
Statistical Modelling
Statistical Modelling 数学-统计学与概率论
CiteScore
2.20
自引率
0.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: The primary aim of the journal is to publish original and high-quality articles that recognize statistical modelling as the general framework for the application of statistical ideas. Submissions must reflect important developments, extensions, and applications in statistical modelling. The journal also encourages submissions that describe scientifically interesting, complex or novel statistical modelling aspects from a wide diversity of disciplines, and submissions that embrace the diversity of applied statistical modelling.
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