Multilevel sparse functional principal component analysis.
Title | Multilevel sparse functional principal component analysis. |
Publication Type | Journal Article |
Year of Publication | 2014 |
Authors | Di C, Crainiceanu CM, Jank WS |
Journal | Stat |
Volume | 3 |
Issue | 1 |
Pagination | 126-143 |
Date Published | 2014 Jan 29 |
ISSN | 0038-9986 |
Abstract | We consider analysis of sparsely sampled multilevel functional data, where the basic observational unit is a function and data have a natural hierarchy of basic units. An example is when functions are recorded at multiple visits for each subject. Multilevel functional principal component analysis (MFPCA; Di et al. 2009) was proposed for such data when functions are densely recorded. Here we consider the case when functions are sparsely sampled and may contain only a few observations per function. We exploit the multilevel structure of covariance operators and achieve data reduction by principal component decompositions at both between and within subject levels. We address inherent methodological differences in the sparse sampling context to: 1) estimate the covariance operators; 2) estimate the functional principal component scores; 3) predict the underlying curves. Through simulations the proposed method is able to discover dominating modes of variations and reconstruct underlying curves well even in sparse settings. Our approach is illustrated by two applications, the Sleep Heart Health Study and eBay auctions. |
DOI | 10.1002/sta4.50 |
Alternate Journal | Stat |
PubMed ID | 24872597 |
PubMed Central ID | PMC4032817 |
Grant List | P01 CA053996 / CA / NCI NIH HHS / United States R01 AG014358 / AG / NIA NIH HHS / United States R01 HG006124 / HG / NHGRI NIH HHS / United States R01 NS060910 / NS / NINDS NIH HHS / United States R21 ES022332 / ES / NIEHS NIH HHS / United States |