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Joint coverage probability in a simulation study on continuous-time Markov chain parameter estimation

机译:连续时间马尔可夫链参数估计的仿真研究中的联合覆盖概率

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摘要

Parameter dependency within data sets in simulation studies is common, especially in models such as continuous-time Markov chains (CTMCs). Additionally, the literature lacks a comprehensive examination of estimation performance for the likelihood-based general multi-state CTMC. Among studies attempting to assess the estimation, none have accounted for dependency among parameter estimates. The purpose of this research is twofold: (1) to develop a multivariate approach for assessing accuracy and precision for simulation studies (2) to add to the literature a comprehensive examination of the estimation of a general 3-state CTMC model. Simulation studies are conducted to analyze longitudinal data with a trinomial outcome using a CTMC with and without covariates. Measures of performance including bias, component-wise coverage probabilities, and joint coverage probabilities are calculated. An application is presented using Alzheimer's disease caregiver stress levels. Comparisons of joint and component-wise parameter estimates yield conflicting inferential results in simulations from models with and without covariates. In conclusion, caution should be taken when conducting simulation studies aiming to assess performance and choice of inference should properly reflect the purpose of the simulation.
机译:在仿真研究中,数据集内的参数依赖性很常见,尤其是在诸如连续时间马尔可夫链(CTMC)等模型中。此外,文献缺乏对基于似然性的通用多状态CTMC的估计性能的全面检查。在试图评估估计的研究中,没有一个能说明参数估计之间的依赖性。这项研究的目的是双重的:(1)开发一种用于评估仿真研究的准确性和精度的多元方法(2)在文献中增加对一般三态CTMC模型估计的全面检查。进行模拟研究以使用带有和不带有协变量的CTMC分析具有三项式结果的纵向数据。计算性能度量,包括偏差,按组件划分的覆盖概率和联合覆盖概率。使用阿尔茨海默氏病照护者的压力水平提出了一种应用。在具有和不具有协变量的模型的仿真中,联合和按组件参数估计的比较得出的推论结果相互矛盾。总之,在进行旨在评估性能的仿真研究时,应谨慎行事,推理的选择应正确反映仿真的目的。

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