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Nonparametric modeling of clustered customer survival data
Authors:Iris Ivy M Gauran
Institution:School of Statistics, University of the Philippines Diliman, Diliman, Quezon City, Philippines
Abstract:We incorporate a random clustering effect into the nonparametric version of Cox Proportional Hazards model to characterize clustered survival data. The simulation studies provide evidence that clustered survival data can be better characterized through a nonparametric model. Predictive accuracy of the nonparametric model is affected by number of clusters and distribution of the random component accounting for clustering effect. As the functional form of the covariate departs from linearity, the nonparametric model is becoming more advantageous over the parametric counterpart. Finally, nonparametric is better than parametric model when data are highly heterogenous and/or there is misspecification error.
Keywords:Backfitting algorithm  Clustered data  Generalized additive models  Nonparametric regression  Random effects  Survival analysis
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