Erosheva Elena A, Fienberg Stephen E, Joutard Cyrille
Department of Statistics, University of Washington, Box 354322, Seattle, WA 98195-4322, E-mail:
Ann Appl Stat. 2007;1(2):346-384. doi: 10.1214/07-aoas126.
Data on functional disability are of widespread policy interest in the United States, especially with respect to planning for Medicare and Social Security for a growing population of elderly adults. We consider an extract of functional disability data from the National Long Term Care Survey (NLTCS) and attempt to develop disability profiles using variations of the Grade of Membership (GoM) model. We first describe GoM as an individual-level mixture model that allows individuals to have partial membership in several mixture components simultaneously. We then prove the equivalence between individual-level and population-level mixture models, and use this property to develop a Markov Chain Monte Carlo algorithm for Bayesian estimation of the model. We use our approach to analyze functional disability data from the NLTCS.
在美国,关于功能残疾的数据受到广泛的政策关注,特别是在为日益增多的老年人口规划医疗保险和社会保障方面。我们考虑了来自国家长期护理调查(NLTCS)的功能残疾数据提取物,并尝试使用成员等级(GoM)模型的变体来开发残疾概况。我们首先将GoM描述为一种个体水平的混合模型,该模型允许个体同时部分隶属于多个混合成分。然后,我们证明了个体水平和总体水平混合模型之间的等价性,并利用这一特性开发了一种用于该模型贝叶斯估计的马尔可夫链蒙特卡罗算法。我们使用我们的方法来分析来自NLTCS的功能残疾数据。