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首页> 外文期刊>Scandinavian journal of statistics >Variable Selection for Panel Count Data via Non-Concave Penalized Estimating Function
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Variable Selection for Panel Count Data via Non-Concave Penalized Estimating Function

机译:通过非凹惩罚估计函数对面板计数数据进行变量选择

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Variable selection is an important issue in all regression analyses, and in this paper we discuss this in the context of regression analysis of panel count data. Panel count data often occur in long-term studies that concern occurrence rate of a recurrent event, and their analysis has recently attracted a great deal of attention. However, there does not seem to exist any established approach for variable selection with respect to panel count data. For the problem, we adopt the idea behind the non-concave penalized likelihood approach and develop a non-concave penalized estimating function approach. The proposed methodology selects variables and estimates regression coefficients simultaneously, and an algorithm is presented for this process. We show that the proposed procedure performs as well as the oracle procedure in that it yields the estimates as if the correct submodel were known. Simulation studies are conducted for assessing the performance of the proposed approach and suggest that it works well for practical situations. An illustrative example from a cancer study is provided.
机译:变量选择是所有回归分析中的重要问题,在本文中,我们将在面板计数数据的回归分析中对此进行讨论。长期研究中经常出现小组计数数据,这些数据涉及复发事件的发生率,而其分析近来引起了广泛关注。但是,似乎没有任何确定的方法可以针对面板计数数据进行变量选择。针对该问题,我们采用了非凹形惩罚似然方法背后的思想,并开发了一种非凹形惩罚估计函数方法。所提出的方法同时选择变量和估计回归系数,并为此过程提出了一种算法。我们表明,所提出的过程与oracle过程一样好,因为它产生的估计就像已知正确的子模型一样。进行了仿真研究,以评估所提出方法的性能,并表明该方法在实际情况下效果很好。提供了来自癌症研究的说明性实例。

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