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首页> 外文期刊>Journal of statistical computation and simulation >Lasso penalized semiparametric regression on high-dimensional recurrent event data via coordinate descent
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Lasso penalized semiparametric regression on high-dimensional recurrent event data via coordinate descent

机译:通过坐标下降对高维递归事件数据进行套索惩罚半参数回归

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This paper studies a fast computational algorithm for variable selection on high-dimensional recurrent event data. Based on the lasso penalized partial likelihood function for the response process of recurrent event data, a coordinate descent algorithm is used to accelerate the estimation of regression coefficients. This algorithm is capable of selecting important predictors for underdetermined problems where the number of predictors far exceeds the number of cases. The selection strength is controlled by a tuning constant that is determined by a generalized cross-validation method. Our numerical experiments on simulated and real data demonstrate the good performance of penalized regression in model building for recurrent event data in high-dimensional settings.
机译:本文研究了一种用于高维重复事件数据的变量选择的快速计算算法。基于循环事件数据响应过程的套索罚分偏似然函数,采用坐标下降算法来加速回归系数的估计。该算法能够为预测不到的问题选择重要的预测因子,其中预测因子的数量远远超过案例数。选择强度由调谐常数控制,该调谐常数由广义交叉验证方法确定。我们在模拟数据和真实数据上的数值实验证明了在高维环境中对重复事件数据进行建模时,惩罚回归的良好性能。

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