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A Bayesian latent variable approach to functional principal components analysis with binary and count data

机译:使用贝叶斯潜变量方法对功能主成分进行二进制和计数数据分析

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摘要

Recently, van der Linde (Comput. Stat. Data Anal. 53:517-533, 2008) proposed a variational algorithm to obtain approximate Bayesian inference in functional principal components analysis (FPCA), where the functions were observed with Gaussian noise. Generalized FPCA under different noise models with sparse longitudinal data was developed by Hall et al. (J. R. Stat. Soc. B 70:703-723, 2008), but no Bayesian approach is available yet. It is demonstrated that an adapted version of the variational algorithm can be applied to obtain a Bayesian FPCA for canonical parameter functions, particularly log-intensity functions given Poisson count data or logit-probability functions given binary observations. To this end a second order Taylor expansion of the log-likelihood, that is, a working Gaussian distribution and hence another step of approximation, is used. Although the approach is conceptually straightforward, difficulties can arise in practical applications depending on the accuracy of the approximation and the information in the data. A modified algorithm is introduced generally for one-parameter exponential families and exemplified for binary and count data. Conditions for its successful application are discussed and illustrated using simulated data sets. Also an application with real data is presented.
机译:最近,van der Linde(Comput。Stat。Data Anal。53:517-533,2008)提出了一种变分算法,以在功能主成分分析(FPCA)中获得近似贝叶斯推断,其中使用高斯噪声观察函数。 Hall等人开发了在具有稀疏纵向数据的不同噪声模型下的广义FPCA。 (J. R. Stat。Soc。B 70:703-723,2008),但是尚无贝叶斯方法。结果表明,可以将变分算法的改进版本应用于规范参数函数的贝叶斯FPCA,特别是给定泊松计数数据的对数强度函数或给定二进制观测值的对数概率函数。为此,使用对数似然的二阶泰勒展开,即,工作的高斯分布,并因此使用另一近似步骤。尽管该方法从概念上讲是简单明了的,但在实际应用中可能会遇到困难,具体取决于逼近的准确性和数据中的信息。通常针对单参数指数族引入改进的算法,并针对二进制和计数数据举例说明。使用模拟数据集讨论并说明了其成功应用的条件。还介绍了具有实际数据的应用程序。

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