Minorize–maximize algorithm for the generalized odds rate model for clustered current status data

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY Canadian Journal of Statistics-Revue Canadienne De Statistique Pub Date : 2022-10-12 DOI:10.1002/cjs.11733
Tong Wang, Kejun He, Wei Ma, Dipankar Bandyopadhyay, Samiran Sinha
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引用次数: 1

Abstract

Current status data are widely used in epidemiology and public health, where the only observable information is the random inspection time and the event status at inspection. This article presents a unified methodology to analyze such complex data subject to clustering. Given the random clustering effect, the time to event is assumed to follow a semiparametric generalized odds rate (GOR) model. The nonparametric component of the GOR model is approximated via penalized splines, with a set of knot points that increase with the sample size. The within-subject correlation is accounted for by a random (frailty) effect. For estimation, a novel MM algorithm is developed that allows the separation of the parametric and nonparametric components of the model. This separation makes the problem conducive to applying the Newton–Raphson algorithm that quickly returns the roots. The work is accompanied by a complexity analysis of the algorithm, a rigorous asymptotic proof, and the related semiparametric efficiency of the proposed methodology. The finite sample performance of the proposed method is assessed via simulation studies. Furthermore, the proposed methodology is illustrated via real data analysis on periodontal disease studies accompanied by diagnostic checks to identify influential observations.

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聚类当前状态数据的广义比值率模型的Minorize–maximum算法
当前状态数据在流行病学和公共卫生中广泛使用,其中唯一可观察到的信息是随机检查时间和检查时的事件状态。本文提出了一种统一的方法来分析这种受聚类影响的复杂数据。考虑到随机聚类效应,假设到事件的时间遵循半参数广义赔率(GOR)模型。GOR模型的非参数成分通过惩罚样条近似,具有一组随样本量增加的结点。主体内相关性是由随机(脆弱)效应来解释的。对于估计,开发了一种新的MM算法,允许分离模型的参数和非参数组件。这种分离使得问题有利于应用快速返回根的牛顿-拉夫森算法。这项工作伴随着算法的复杂性分析,严格的渐近证明,以及所提出的方法的相关半参数效率。通过仿真研究对该方法的有限样本性能进行了评价。此外,建议的方法是通过对牙周病研究的真实数据分析来说明的,并附有诊断检查,以确定有影响的观察结果。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
62
审稿时长
>12 weeks
期刊介绍: The Canadian Journal of Statistics is the official journal of the Statistical Society of Canada. It has a reputation internationally as an excellent journal. The editorial board is comprised of statistical scientists with applied, computational, methodological, theoretical and probabilistic interests. Their role is to ensure that the journal continues to provide an international forum for the discipline of Statistics. The journal seeks papers making broad points of interest to many readers, whereas papers making important points of more specific interest are better placed in more specialized journals. The levels of innovation and impact are key in the evaluation of submitted manuscripts.
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Issue Information Issue Information Issue Information Censored autoregressive regression models with Student-t innovations Acknowledgement of referees' services remerciements aux membres des jurys
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