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Efficient estimation for time series following generalized linear models

机译:遵循广义线性模型的时间序列有效估计

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In this paper, we consider James-Stein shrinkage and pretest estimation methods for time series following generalized linear models when it is conjectured that some of the regression parameters may be restricted to a subspace. Efficient estimation strategies are developed when there are many covariates in the model and some of them are not statistically significant. Statistical properties of the pretest and shrinkage estimation methods including asymptotic distributional bias and risk are developed. We investigate the relative performances of shrinkage and pretest estimators with respect to the unrestricted maximum partial likelihood estimator (MPLE). We show that the shrinkage estimators have a lower relative mean squared error as compared to the unrestricted MPLE when the number of significant covariates exceeds two. Monte Carlo simulation experiments were conducted for different combinations of inactive covariates and the performance of each estimator was evaluated in terms of its mean squared error. The practical benefits of the proposed methods are illustrated using two real data sets.
机译:在本文中,当我们推测某些回归参数可能限于子空间时,我们考虑遵循广义线性模型的时间序列的James-Stein收缩和预测试估计方法。当模型中有许多协变量,但其中一些在统计上不显着时,便会开发出有效的估算策略。开发了包括渐近分布偏差和风险在内的预测试和收缩估计方法的统计特性。我们调查收缩率和预测试估计量相对于无限制最大部分似然估计量(MPLE)的相对性能。我们显示,当显着协变量的数量超过2时,与无限制的MPLE相比,收缩估计量具有较低的相对均方误差。针对无效协变量的不同组合进行了蒙特卡洛模拟实验,并根据均方误差评估了每个估计量的性能。使用两个真实数据集说明了所提出方法的实际好处。

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