王跃东:Smoothing spline mixed-effects density models for clustered data

时间:2016-12-25浏览:228设置

时间:20161226日 下午:4:00—5:00

地点: 统计楼103

报告人:王跃东Department of Statistics and Applied Probability, University of CaliforniaSanta Barbara

报告题目:Smoothing spline mixed-effects density models for clustered data

摘要:

  Smoothing spline mixed-effects density models are proposed for the nonparametric estimation of density and conditional density functions with clustered data. The random effects in a density model introduce within-cluster correlation and allow us to borrow strength across clusters by shrinking cluster specific density function to the population average, where the amount of shrinkage is decided automatically by data. Estimation is carried out using the penalized likelihood and computed using a Markov chain Monte Carlo stochastic approximation algorithm. We apply our methods to investigate evolution of hemoglobin density functions over time in response to guideline changes on anemia management for dialysis patients.

  

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