Publication | Open Access
Fast methods for spatially correlated multilevel functional data
104
Citations
34
References
2010
Year
EngineeringNew Methodological FrameworkData ScienceMultilevel Functional DataBiostatisticsBiological Network VisualizationPublic HealthStatisticsBayesian Hierarchical ModelingSpatial Statistical AnalysisMultidimensional AnalysisHierarchical Functional DataFunctional Data AnalysisNonparametric Bootstrap SamplingComputational BiologyStatistical InferenceMultivariate AnalysisSpatial StatisticsApproximate Bayesian Computation
We propose a new methodological framework for the analysis of hierarchical functional data when the functions at the lowest level of the hierarchy are correlated. For small data sets, our methodology leads to a computational algorithm that is orders of magnitude more efficient than its closest competitor (seconds versus hours). For large data sets, our algorithm remains fast and has no current competitors. Thus, in contrast to published methods, we can now conduct routine simulations, leave-one-out analyses, and nonparametric bootstrap sampling. Our methods are inspired by and applied to data obtained from a state-of-the-art colon carcinogenesis scientific experiment. However, our models are general and will be relevant to many new data sets where the object of inference are functions or images that remain dependent even after conditioning on the subject on which they are measured. Supplementary materials are available at Biostatistics online.
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