Li, Meng Wang, Kehui Maity, Arnab Staicu, Ana-Maria
Published in
Journal of multivariate analysis
In this paper, we study statistical inference in functional quantile regression for scalar response and a functional covariate. Specifically, we consider a functional linear quantile regression model where the effect of the covariate on the quantile of the response is modeled through the inner product between the functional covariate and an unknown...
Cho, Min Ho Kurtek, Sebastian Bharath, Karthik
Published in
Journal of multivariate analysis
It is quite common for functional data arising from imaging data to assume values in infinite-dimensional manifolds. Uncovering associations between two or more such nonlinear functional data extracted from the same object across medical imaging modalities can assist development of personalized treatment strategies. We propose a method for canonica...
Fang, Kuangnan Chen, Yuanxing Ma, Shuangge Zhang, Qingzhao
Published in
Journal of multivariate analysis
In biomedical data analysis, clustering is commonly conducted. Biclustering analysis conducts clustering in both the sample and covariate dimensions and can more comprehensively describe data heterogeneity. In most of the existing biclustering analyses, scalar measurements are considered. In this study, motivated by time-course gene expression data...
Liu, Bin Zhang, Xinsheng Liu, Yufeng
Published in
Journal of multivariate analysis
Change point analysis aims to detect structural changes in a data sequence. It has always been an active research area since it was introduced in the 1950s. In modern statistical applications, however, high-throughput data with increasing dimensions are ubiquitous in fields ranging from economics, finance to genetics and engineering. For those prob...
Guinness, Joseph
Published in
Journal of multivariate analysis
We propose computationally efficient methods for estimating stationary multivariate spatial and spatial-temporal spectra from incomplete gridded data. The methods are iterative and rely on successive imputation of data and updating of model estimates. Imputations are done according to a periodic model on an expanded domain. The periodicity of the i...
Langworthy, Benjamin W Stephens, Rebecca L Gilmore, John H Fine, Jason P
Published in
Journal of multivariate analysis
Canonical correlation analysis (CCA) is a common method used to estimate the associations between two different sets of variables by maximizing the Pearson correlation between linear combinations of the two sets of variables. We propose a version of CCA for transelliptical distributions with an elliptical copula using pairwise Kendall's tau to esti...
Wang, Jia Cai, Xizhen Li, Runze
Published in
Journal of multivariate analysis
Most existing methods of variable selection in partially linear models (PLM) with ultrahigh dimensional covariates are based on partial residuals, which involve a two-step estimation procedure. While the estimation error produced in the first step may have an impact on the second step, multicollinearity among predictors adds additional challenges i...
Chen, Ziqi Hu, Jianhua Zhu, Hongtu
Published in
Journal of multivariate analysis
The aim of this paper is to develop a new framework of surface functional models (SFM) for surface functional data which contains repeated observations in two domains (typically, time-location). The primary problem of interest is to investigate the relationship between a response and the two domains, where the numbers of observations in both domain...
Lee, Seonjoo Shen, Haipeng Truong, Young
Published in
Journal of multivariate analysis
Independent Component Analysis (ICA) offers an effective data-driven approach for blind source extraction encountered in many signal and image processing problems. Although many ICA methods have been developed, they have received relatively little attention in the statistics literature, especially in terms of rigorous theoretical investigation for ...
Tang, Lu Zhou, Ling Song, Peter X-K
Published in
Journal of multivariate analysis
We propose a distributed method for simultaneous inference for datasets with sample size much larger than the number of covariates, i.e., N ≫ p, in the generalized linear models framework. When such datasets are too big to be analyzed entirely by a single centralized computer, or when datasets are already stored in distributed database systems, the...