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Parameter estimation of regression model with AR(p) error terms based on skew distributions with EM algorithm

机译:基于偏差分布与EM算法的AR(P)误差术语参数估计

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摘要

In the linear regression model, the errors are usually assumed to be uncorrelated. However, in real-life data, this assumption is not often plausible. In this study, first, we will assume that the errors of the regression model have autoregressive structure. This type of regression models has been considered before. However, in those papers under this assumption usually, the symmetric distributions are used as error distribution. The main contribution of this work is to use skew distributions instead of symmetric distributions as error distribution in regression models with autoregressive errors. We provide expectation maximization algorithm to compute the maximum likelihood estimates for the parameters. The performances of the proposed estimators are demonstrated with a simulation study and a real data example. We also provide the confidence intervals using the observed Fisher information matrix for the corresponding estimators.
机译:在线性回归模型中,通常假设错误是不相关的。 然而,在现实生活中,这种假设通常不合理。 在这项研究中,首先,我们将假设回归模型的错误具有自回归结构。 此类回归模型已被考虑在之前。 然而,在这种假设下的这些论文中,通常,对称分布用作误差分布。 这项工作的主要贡献是使用偏斜分布而不是对称分布作为回归模型中的误差分布,具有自回归误差。 我们提供期望最大化算法来计算参数的最大似然估计。 通过模拟研究和实际数据示例对所提出的估计器的性能进行说明。 我们还使用观察到的Fisher信息矩阵为相应的估计提供置信区间。

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