具有大量事件时间数据的加速故障时间模型的分而治之

Pub Date : 2022-08-27 DOI:10.1002/cjs.11725
Wen Su, Guosheng Yin, Jing Zhang, Xingqiu Zhao
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引用次数: 0

摘要

大数据在许多领域带来了新的理论和计算挑战以及巨大的机遇。在医疗保健研究中,我们开发了一种新的分治(DAC)方法来处理加速故障时间模型下的大量右删失数据,其中样本量非常大,预测因子的维度很大但小于样本量。具体来说,我们通过组合所有子集的估计结果而不进行惩罚来近似加权最小二乘损失函数,从而构造惩罚损失函数。由此得到的自适应LASSO惩罚DAC估计器具有预言性质。仿真研究表明,与使用完整数据的估计结果相比,所提出的DAC程序性能良好,并且还以令人满意的性能减少了计算时间。我们提出的DAC方法应用于中国健康长寿纵向调查的大量数据集。
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Divide and conquer for accelerated failure time model with massive time-to-event data

Big data present new theoretical and computational challenges as well as tremendous opportunities in many fields. In health care research, we develop a novel divide-and-conquer (DAC) approach to deal with massive and right-censored data under the accelerated failure time model, where the sample size is extraordinarily large and the dimension of predictors is large but smaller than the sample size. Specifically, we construct a penalized loss function by approximating the weighted least squares loss function by combining estimation results without penalization from all subsets. The resulting adaptive LASSO penalized DAC estimator enjoys the oracle property. Simulation studies demonstrate that the proposed DAC procedure performs well and also reduces the computation time with satisfactory performance compared with estimation results using the full data. Our proposed DAC approach is applied to a massive dataset from the Chinese Longitudinal Healthy Longevity Survey.

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