Functional linear regression analysis for longitudinal data
University of California, Davis · Colorado State University
Abstract
We propose nonparametric methods for functional linear regression which are designed for sparse longitudinal data, where both the predictor and response are functions of a covariate such as time. Predictor and response processes have smooth random trajectories, and the data consist of a small number of noisy repeated measurements made at irregular times for a sample of subjects. In longitudinal studies, the number of repeated measurements per subject is often small and may be modeled as a discrete random number and, accordingly, only a finite and asymptotically nonincreasing number of measurements are available for each subject or experimental unit. We propose a functional regression approach for this…
Citation impact
- FWCI
- 7.48
- Percentile
- 100%
- References
- 43
Authors
3Topics & keywords
- Functional principal component analysis
- Mathematics
- Functional data analysis
- Statistics
- Pointwise
- Regression analysis
- Linear regression
- Covariate