首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian Semiparametric Regression in the Presence of Conditionally Heteroscedastic Measurement and Regression Errors
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Bayesian Semiparametric Regression in the Presence of Conditionally Heteroscedastic Measurement and Regression Errors

机译:贝叶斯半导体回归在有条件的异源测量和回归误差存在下存在

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摘要

We consider the problem of robust estimation of the regression relationship between a response and a covariate based on sample in which precise measurements on the covariate are not available but error-prone surrogates for the unobserved covariate are available for each sampled unit. Existing methods often make restrictive and unrealistic assumptions about the density of the covariate and the densities of the regression and the measurement errors, for example, normality and, for the latter two, also homoscedasticity and thus independence from the covariate. In this article we describe Bayesian semiparametric methodology based on mixtures of B-splines and mixtures induced by Dirichlet processes that relaxes these restrictive assumptions. In particular, our models for the aforementioned densities adapt to asymmetry, heavy tails and multimodality. The models for the densities of regression and measurement errors also accommodate conditional heteroscedasticity. In simulation experiments, our method vastly outperforms existing methods. We apply our method to data from nutritional epidemiology.
机译:我们考虑基于样本的响应和协变量之间的回归关系的鲁棒估计问题,其中不可用的协变量的精确测量,但是对于每个采样的单位,可以获得未观察的协变量的易于替代的替代品。现有方法往往对关于再生的密度和回归的密度以及测量误差的限制和不切实际的假设,例如正常性,并且对于后两种,也是同性恋,因此独立于协变量。在本文中,我们描述了基于B样条和通过放松这些限制假设的Dirichlet方法引起的混合物的混合物来描述贝叶斯半甲酰均方法。特别是,我们的上述密度的模型适应不对称,重型尾部和多模。回归和测量误差密度的模型也适应条件异源性。在仿真实验中,我们的方法非常优于现有方法。我们将方法应用于来自营养流行病学的数据。

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