Low-Rank Covariance Function Estimation for Multidimensional Functional Data

08/29/2020
by   Jiayi Wang, et al.
0

Multidimensional function data arise from many fields nowadays. The covariance function plays an important role in the analysis of such increasingly common data. In this paper, we propose a novel nonparametric covariance function estimation approach under the framework of reproducing kernel Hilbert spaces (RKHS) that can handle both sparse and dense functional data. We extend multilinear rank structures for (finite-dimensional) tensors to functions, which allow for flexible modeling of both covariance operators and marginal structures. The proposed framework can guarantee that the resulting estimator is automatically semi-positive definite, and can incorporate various spectral regularizations. The trace-norm regularization in particular can promote low ranks for both covariance operator and marginal structures. Despite the lack of a closed form, under mild assumptions, the proposed estimator can achieve unified theoretical results that hold for any relative magnitudes between the sample size and the number of observations per sample field, and the rate of convergence reveals the "phase-transition" phenomenon from sparse to dense functional data. Based on a new representer theorem, an ADMM algorithm is developed for the trace-norm regularization. The appealing numerical performance of the proposed estimator is demonstrated by a simulation study and the analysis of a dataset from the Argo project.

READ FULL TEXT
research
04/11/2021

CovNet: Covariance Networks for Functional Data on Multidimensional Domains

Covariance estimation is ubiquitous in functional data analysis. Yet, th...
research
07/14/2022

Adaptive Functional Thresholding for Sparse Covariance Function Estimation in High Dimensions

Covariance function estimation is a fundamental task in multivariate fun...
research
07/17/2014

Sparse and Low-Rank Covariance Matrices Estimation

This paper aims at achieving a simultaneously sparse and low-rank estima...
research
12/21/2018

Low-rank Approximation of Linear Maps

This work provides closed-form solutions and minimal achievable errors f...
research
07/25/2023

Minimum regularized covariance trace estimator and outlier detection for functional data

In this paper, we propose the Minimum Regularized Covariance Trace (MRCT...
research
07/30/2021

Efficient Multidimensional Functional Data Analysis Using Marginal Product Basis Systems

Modern datasets, from areas such as neuroimaging and geostatistics, ofte...
research
07/23/2020

Principal Separable Component Analysis via the Partial Inner Product

The non-parametric estimation of covariance lies at the heart of functio...

Please sign up or login with your details

Forgot password? Click here to reset