首页> 外文期刊>Australian & New Zealand journal of statistics >ASYMPTOTIC DISTRIBUTIONS OF SEMIPARAMETRIC MAXIMUM LIKELIHOOD ESTIMATORS WITH ESTIMATING EQUATIONS FOR GROUP-CENSORED DATA
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ASYMPTOTIC DISTRIBUTIONS OF SEMIPARAMETRIC MAXIMUM LIKELIHOOD ESTIMATORS WITH ESTIMATING EQUATIONS FOR GROUP-CENSORED DATA

机译:具有群检阅数据的估计方程的半参数最大似然估计的渐近分布

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摘要

Semiparametric maximum likelihood estimation with estimating equations (SMLE) is more flexible than traditional methods; it has fewer restrictions on distributions and regression models. The required information about distribution and regression structures is incorporated in estimating equations of the SMLE to improve the estimation quality of non-parametric methods. The likelihood of SMLE for censored data involves complicated implicit functions without closed-form expressions, and the first derivatives of the log-profile-likelihood cannot be expressed as summations of independent and identically distributed random variables; it is challenging to derive asymptotic properties of the SMLE for censored data. For group-censored data, the paper shows that all the implicit functions are well defined and obtains the asymptotic distributions of the SMLE for model parameters and lifetime distributions. With several examples the paper compares the SMLE, the regular non-parametric likelihood estimation method and the parametric MLEs in terms of their asymptotic efficiencies, and illustrates application of SMLE. Various asymptotic distributions of the likelihood ratio statistics are derived for testing the adequacy of estimating equations and a partial set of parameters equal to some known values.
机译:估计方程(SMLE)的半参数最大似然估计比传统方法更灵活;它对分布和回归模型的限制较少。有关分布和回归结构的必需信息被合并到SMLE的估计方程中,以提高非参数方法的估计质量。被检数据的SMLE可能性涉及复杂的隐函数,而没有闭合形式的表达式,对数轮廓可能性的一阶导数不能表示为独立且分布均匀的随机变量的总和。对于被检查的数据,推导SMLE的渐近性质具有挑战性。对于组删失数据,本文表明所有隐式函数均得到了很好的定义,并获得了模型参数和生命周期分布的SMLE的渐近分布。通过几个示例,本文比较了SMLE,常规非参数似然估计方法和参数MLE的渐近效率,并说明了SMLE的应用。得出似然比统计的各种渐近分布,以测试估计方程和等于某些已知值的部分参数的充分性。

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