论文标题
使用审查数据的正常部分线性回归模型的比例混合的半参数推断
Semiparametric inference for the scale-mixture of normal partial linear regression model with censored data
论文作者
论文摘要
在审查数据建模的框架中,假设正态分布的随机错误的经典线性回归模型近年来受到了越来越多的关注,主要用于数学和计算方便。但是,实际研究经常批评这种线性回归模型,因为它敏感偏离正态性和部分非线性。本文提议在部分线性回归模型的背景下同时解决这些潜在问题,假设随机误差遵循正常(SMN)分布家族的比例混合。提出的方法使我们能够以极大的灵活性对数据进行建模,可容纳沉重的尾巴和离群值。通过实现B-Spline函数并使用SMN分布的方便层次表示,开发了一种计算分析性EM-TYPE算法来执行模型参数的最大似然推理。进行了各种模拟研究,以研究有限的样本特性以及模型在处理重型尾巴分布数据集时的鲁棒性。最终分析了真实的数据示例,以说明所提出的方法的实用性。
In the framework of censored data modeling, the classical linear regression model that assumes normally distributed random errors has received increasing attention in recent years, mainly for mathematical and computational convenience. However, practical studies have often criticized this linear regression model due to its sensitivity to departure from the normality and from the partial nonlinearity. This paper proposes to solve these potential issues simultaneously in the context of the partial linear regression model by assuming that the random errors follow a scale-mixture of normal (SMN) family of distributions. The proposed method allows us to model data with great flexibility, accommodating heavy tails, and outliers. By implementing the B-spline function and using the convenient hierarchical representation of the SMN distributions, a computationally analytical EM-type algorithm is developed to perform maximum likelihood inference of the model parameters. Various simulation studies are conducted to investigate the finite sample properties as well as the robustness of the model in dealing with the heavy-tails distributed datasets. Real-word data examples are finally analyzed for illustrating the usefulness of the proposed methodology.