干扰素
非参数统计
Dirichlet分布
数学
参数统计
非参数回归
计量经济学
贝叶斯概率
代表(政治)
比例(比率)
计算机科学
应用数学
统计
地理
数学分析
政治
政治学
法学
边值问题
地图学
作者
Fernando A. Quintana,Peter Müller,Alejandro Jara,Steven N. MacEachern
出处
期刊:Statistical Science
[Institute of Mathematical Statistics]
日期:2022-01-20
卷期号:37 (1)
被引量:39
摘要
Standard regression approaches assume that some finite number of the response distribution characteristics, such as location and scale, change as a (parametric or nonparametric) function of predictors. However, it is not always appropriate to assume a location/scale representation, where the error distribution has unchanging shape over the predictor space. In fact, it often happens in applied research that the distribution of responses under study changes with predictors in ways that cannot be reasonably represented by a finite dimensional functional form. This can seriously affect the answers to the scientific questions of interest, and therefore more general approaches are indeed needed. This gives rise to the study of fully nonparametric regression models. We review some of the main Bayesian approaches that have been employed to define probability models where the complete response distribution may vary flexibly with predictors. We focus on developments based on modifications of the Dirichlet process, historically termed dependent Dirichlet processes, and some of the extensions that have been proposed to tackle this general problem using nonparametric approaches.
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