Abstract Dual-semiparametric regression using weighted Dirichlet process mixture
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Dual-semiparametric regression using weighted Dirichlet process mixture

机译:使用加权Dirichlet工艺混合物的双半脉珠

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AbstractAn efficient and flexible Bayesian approach is proposed for a dual-semiparametric regression model that models mean function semiparametrically and estimates the distribution of the error term nonparametrically. Using a weighted Dirichlet process mixture (WDPM), a Bayesian approach has been developed on the assumption that the distributions of the response variables are unknown. The WDPM approach is especially useful for real applications that have heterogeneous error distributions or come from a mixture of distributions. In the mean function, the unknown functions are estimated using natural cubic smoothing splines. For the error terms, several different WDPMs are proposed using different weights that depend on the distances between the covariates. Their marginal likelihoods are derived, and the computation of marginal likelihood for WDPM is provided. Efficient Markov chain Monte Carlo (MCMC) algorithms are also provided. The Bayesian approaches based on different WDPMs are compared with the parametric error model and the Dirichlet process mixture (DPM) error model in terms of the Bayes factor using a simulation study, suggesting better performance of the Bayesian approach based on WDPM. The advantage of the proposed Bayesian approach is also demonstrated using the credit rating data.]]>
机译:<![cdata [ Abstract 提出了一种高效且灵活的贝叶斯方法,用于模拟均匀函数的双半比别回归模型,并估计非分散性误差术语的分布。使用加权Dirichlet过程混合物(WDPM),已经开发了贝叶斯方法,假设响应变量的分布未知。 WDPM方法对于具有异质误差分布的真实应用或来自分布式的混合的方法特别有用。在平均函数中,使用自然的立方平滑样条估计未知功能。对于错误术语,使用不同权重提出了几种不同的WDPM,这取决于协变量之间的距离。提供了他们的边缘似然性,提供了WDPM的边缘可能性的计算。还提供了高效的马尔可夫链蒙特卡罗(MCMC)算法。基于不同WDPM的贝叶斯方法与使用模拟研究的贝叶斯因子的参数误差模型和Dirichlet过程混合物(DPM)误差模型进行比较,这表明基于WDPM的贝叶斯方法更好地表现。还使用信用评级数据进行了拟议的贝叶斯方法的优势。 ]]>

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