New Pilot-Study Design in Functional Data Analysis
Abstract
Efficient data collection is essential in applied studies where frequent measurements are costly, time-consuming, or burdensome. This challenge is especially pronounced in functional data settings, where each subject is observed at only a few time points due to practical constraints. Most existing design approaches focus on selecting optimal time points for individual subjects, typically relying on model parameters estimated from a pilot study. However, the design of the pilot study itself has received limited attention. We propose a framework for constructing pilot-study designs that support both accurate trajectory recovery and effective planning of future designs. A search algorithm is developed to generate such high-quality pilot-study designs. Simulation studies and a real data application demonstrate that our approach outperforms commonly used alternatives, highlighting its value in resource-limited settings.
Cite
@article{arxiv.2508.00176,
title = {New Pilot-Study Design in Functional Data Analysis},
author = {Ping-Han Huang and Ming-Hung Kao},
journal= {arXiv preprint arXiv:2508.00176},
year = {2025}
}