Abstract
Panel count data typically refer to data arising from studies with recurrent events, in which subjects are observed only at discrete time points rather than under continuous observations. We investigate a general situation where a recurrent event process is eventually truncated by an informative terminal event and we are particularly interested in behaviors of the recurrent event process near the terminal event. We propose a reversed mean model for estimating the mean function of the recurrent event process. We develop a two-stage sieve likelihood-based method to estimate the mean function, which overcomes the computational difficulties arising from a nuisance functional parameter involved in the likelihood. The consistency and the convergence rate of the two-stage estimator are established. Allowing for the convergence rate slower than the standard rate, we develop the general weak convergence theory of M-estimators with a nuisance functional parameter, and then apply it to the proposed estimator for deriving the asymptotic normality. Furthermore, a class of two-sample tests is developed. The proposed methods are evaluated with extensive simulation studies and illustrated with panel count data from the Chinese Longitudinal Healthy Longevity Study.
Funding Statement
This research was supported in part by the Research Grants Council of Hong Kong (15301218, 17308420), the Natural Science Foundation of China (11771366, 12171374, 11971362), and the CAS AMSS-PolyU Joint Laboratory of Applied Mathematics.
Acknowledgements
The authors would like to thank the two referees, the Associate Editor and Editor-in-Chief (Professor Mark Podolskij) for their constructive and insightful comments and suggestions that greatly improved the paper.
The first two authors contribute equally to this work.
Citation
Li Liu. Wen Su. Guosheng Yin. Xingqiu Zhao. Ying Zhang. "Nonparametric inference for reversed mean models with panel count data." Bernoulli 28 (4) 2968 - 2997, November 2022. https://doi.org/10.3150/21-BEJ1444