数学
广义线性模型
频数推理
选型
广义加性模型
指数族
应用数学
平滑度
协变量
线性模型
加性模型
高斯分布
贝叶斯概率
计量经济学
贝叶斯推理
统计
物理
数学分析
量子力学
出处
期刊:Annual review of statistics and its application
[Annual Reviews]
日期:2024-10-07
被引量:27
标识
DOI:10.1146/annurev-statistics-112723-034249
摘要
Generalized additive models are generalized linear models in which the linear predictor includes a sum of smooth functions of covariates, where the shape of the functions is to be estimated. They have also been generalized beyond the original generalized linear model setting to distributions outside the exponential family and to situations in which multiple parameters of the response distribution may depend on sums of smooth functions of covariates. The widely used computational and inferential framework in which the smooth terms are represented as latent Gaussian processes, splines, or Gaussian random effects is reviewed, paying particular attention to the case in which computational and theoretical tractability is obtained by prior rank reduction of the model terms. An empirical Bayes approach is taken, and its relatively good frequentist performance discussed, along with some more overtly frequentist approaches to model selection. Estimation of the degree of smoothness of component functions via cross validation or marginal likelihood is covered, alongside the computational strategies required in practice, including when data and models are reasonably large. It is briefly shown how the framework extends easily to location-scale modeling, and, with more effort, to techniques such as quantile regression. Also covered are the main classes of smooths of multiple covariates that may be included in models: isotropic splines and tensor product smooth interaction terms.
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