|国家预印本平台
首页|Fast Penalized Generalized Estimating Equations for Large Longitudinal Functional Datasets

Fast Penalized Generalized Estimating Equations for Large Longitudinal Functional Datasets

Fast Penalized Generalized Estimating Equations for Large Longitudinal Functional Datasets

来源:Arxiv_logoArxiv
英文摘要

Longitudinal binary or count functional data are common in neuroscience, but are often too large to analyze with existing functional regression methods. We propose one-step penalized generalized estimating equations that supports continuous, count, or binary functional outcomes and is fast even when datasets have a large number of clusters and large cluster sizes. The method applies to both functional and scalar covariates, and the one-step estimation framework enables efficient smoothing parameter selection, bootstrapping, and joint confidence interval construction. Importantly, this semi-parametric approach yields coefficient confidence intervals that are provably valid asymptotically even under working correlation misspecification. By developing a general theory for adaptive one-step M-estimation, we prove that the coefficient estimates are asymptotically normal and as efficient as the fully-iterated estimator; we verify these theoretical properties in extensive simulations. Finally, we apply our method to a calcium imaging dataset published in Nature, and show that it reveals important timing effects obscured in previous non-functional analyses. In doing so, we demonstrate scaling to common neuroscience dataset sizes: the one-step estimator fits to a dataset with 150,000 (binary) functional outcomes, each observed at 120 functional domain points, in only 13.5 minutes on a laptop without parallelization. We release our implementation in the 'fastFGEE' package.

Francisco Pereira、Gabriel Loewinger、Alex W. Levis、Erjia Cui

神经病学、精神病学生物科学研究方法、生物科学研究技术

Francisco Pereira,Gabriel Loewinger,Alex W. Levis,Erjia Cui.Fast Penalized Generalized Estimating Equations for Large Longitudinal Functional Datasets[EB/OL].(2025-06-25)[2025-07-16].https://arxiv.org/abs/2506.20437.点此复制

评论