Publication | Open Access
Linear Quantile Mixed Models: The<b>lqmm</b>Package for Laplace Quantile Regression
252
Citations
29
References
2014
Year
Quantile AnalysisR Package LqmmData ScienceConditional Quantile FunctionsEngineeringEstimation StatisticStatistical ModelingLaplace Quantile RegressionStatistical InferenceFunctional Data AnalysisStatisticsSemi-nonparametric Estimation
Inference in quantile analysis has received considerable attention in the recent years. Linear quantile mixed models (Geraci and Bottai 2014) represent a flexible statistical tool to analyze data from sampling designs such as multilevel, spatial, panel or longitudinal, which induce some form of clustering. In this paper, I will show how to estimate conditional quantile functions with random effects using the R package lqmm. Modeling, estimation and inference are discussed in detail using a real data example. A thorough description of the optimization algorithms is also provided.
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