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Sieve maximum likelihood estimation for a general class of accelerated hazards models with bundled parameters

机译:筛分具有捆绑参数的一般加速危险模型的最大似然估计

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In semiparametric hazard regression, nonparametric components may involve unknown regression parameters. Such intertwining effects make model estimation and inference much more difficult than the case in which the parametric and nonparametric components can be separated out. We study the sieve maximum likelihood estimation for a general class of hazard regression models, which include the proportional hazards model, the accelerated failure time model, and the accelerated hazards model. Coupled with the cubic B-spline, we propose semiparametric efficient estimators for the parameters that are bundled inside the non parametric component. We overcome the challenges due to intertwining effects of the bundled parameters, and establish the consistency and asymptotic normality properties of the estimators. We carry out simulation studies to examine the finite-sample properties of the proposed method, and demonstrate its efficiency gain over the conventional estimating equation approach. For illustration, we apply our proposed method to a study of bone marrow transplantation for patients with acute leukemia.
机译:在半曝光危险回归中,非参数组分可以涉及未知的回归参数。这种交织效果使模型估计和推理比可以分开参数和非参数分量的情况更困难。我们研究了一般危险回归模型的筛分最大似然估计,包括比例危险模型,加速故障时间模型和加速危险模型。耦合与立方B样条线,我们提出了用于在非参数分量内捆绑在一起的参数的半占用高效估计。我们克服了由于捆绑参数的交织效果而克服了挑战,并建立了估算器的一致性和渐近常态特性。我们执行模拟研究,以检查所提出的方法的有限样本性质,并通过传统估计方程方法展示其效率增益。为了插图,我们将我们提出的方法应用于急性白血病患者的骨髓移植研究。

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