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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Computing Estimates in the Proportional Odds Model
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Computing Estimates in the Proportional Odds Model

机译:按比例赔率模型计算估计

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摘要

The semiparametric proportional odds model for survival data is useful when mortality rates of different groups converge over time. However, fitting the model by maximum likelihood proves computationally cumbersome for large datasets because the number of parameters exceeds the number of uncensored observations. We present here an alternative to the standard Newton-Raphson method of maximum likelihood estimation. Our algorithm, an example of a minorization-maximization (MM) algorithm, is guaranteed to converge to the maximum likelihood estimate whenever it exists. For large problems, both the algorithm and its quasi-Newton accelerated counterpart outperform Newton-Raphson by more than two orders of magnitude.
机译:当不同组的死亡率随时间收敛时,用于生存数据的半参数比例赔率模型很有用。但是,由于参数的数量超过了未经审查的观测值的数量,因此对于大型数据集,以最大似然拟合模型证明了计算繁琐。我们在这里提出了最大似然估计的标准牛顿-拉夫森方法的替代方法。我们的算法是最小化最大化(MM)算法的示例,可以保证只要存在就收敛到最大似然估计。对于大问题,该算法及其准牛顿加速算法都比牛顿-拉夫森算法高出两个数量级。

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