Conjugate sparse plus low rank models for efficient Bayesian interpolation of large spatial data

被引:3
|
作者
Shirota, Shinichiro [1 ]
Finley, Andrew O. [2 ,3 ]
Cook, Bruce D. [4 ]
Banerjee, Sudipto [5 ]
机构
[1] Hitotsubashi Univ, Ctr Promot Social Data Sci Educ & Res, Tokyo, Japan
[2] Michigan State Univ, Dept Forestry, E Lansing, MI 48824 USA
[3] Michigan State Univ, Dept Geog, E Lansing, MI 48824 USA
[4] NASA, Goddard Space Flight Ctr, Greenbelt, MD USA
[5] Univ Calif Los Angeles, Dept Biostat, 650 Charles E Young Dr, Los Angeles, CA 90095 USA
关键词
full scale approximations; Gaussian predictive processes; hierarchical models; nearest-neighbor Gaussian processes; scalable spatial models; GAUSSIAN PROCESS MODELS; INFERENCE; HEIGHT; LIDAR;
D O I
10.1002/env.2748
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A key challenge in spatial data science is the analysis for massive spatially-referenced data sets. Such analyses often proceed from Gaussian process specifications that can produce rich and robust inference, but involve dense covariance matrices that lack computationally exploitable structures. Recent developments in spatial statistics offer a variety of massively scalable approaches. Bayesian inference and hierarchical models, in particular, have gained popularity due to their richness and flexibility in accommodating spatial processes. Our current contribution is to provide computationally efficient exact algorithms for spatial interpolation of massive data sets using scalable spatial processes. We combine low-rank Gaussian processes with efficient sparse approximations. Following recent work by Zhang et al. (2019), we model the low-rank process using a Gaussian predictive process (GPP) and the residual process as a sparsity-inducing nearest-neighbor Gaussian process (NNGP). A key contribution here is to implement these models using exact conjugate Bayesian modeling to avoid expensive iterative algorithms. Through the simulation studies, we evaluate performance of the proposed approach and the robustness of our models, especially for long range prediction. We implement our approaches for remotely sensed light detection and ranging (LiDAR) data collected over the US Forest Service Tanana Inventory Unit (TIU) in a remote portion of Interior Alaska.
引用
收藏
页数:15
相关论文
共 50 条
  • [41] Learning Nonlocal Sparse and Low-Rank Models for Image Compressive Sensing: Nonlocal sparse and low-rank modeling
    Zha, Zhiyuan
    Wen, Bihan
    Yuan, Xin
    Ravishankar, Saiprasad
    Zhou, Jiantao
    Zhu, Ce
    IEEE SIGNAL PROCESSING MAGAZINE, 2023, 40 (01) : 32 - 44
  • [42] ACCELERATED METHODS FOR LOW-RANK PLUS SPARSE IMAGE RECONSTRUCTION
    Lin, Claire Yilin
    Fessler, Jeffrey A.
    2018 IEEE 15TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI 2018), 2018, : 48 - 51
  • [43] Nonconvex Splitting for Regularized Low-Rank plus Sparse Decomposition
    Chartrand, Rick
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2012, 60 (11) : 5810 - 5819
  • [44] Load Forecasting via Low Rank Plus Sparse Matrix Factorization
    Kim, Seung-Jun
    Giannakis, Geogios B.
    2013 ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS AND COMPUTERS, 2013, : 1682 - 1686
  • [45] Sparse Plus Low Rank Matrix Decomposition: A Discrete Optimization Approach
    Bertsimas, Dimitris
    Cory-Wright, Ryan
    Johnson, Nicholas A. G.
    JOURNAL OF MACHINE LEARNING RESEARCH, 2023, 24
  • [46] EXACT RECOVERY OF LOW-RANK PLUS COMPRESSED SPARSE MATRICES
    Mardani, Morteza
    Mateos, Gonzalo
    Giannakis, Georgios B.
    2012 IEEE STATISTICAL SIGNAL PROCESSING WORKSHOP (SSP), 2012, : 49 - 52
  • [47] FORECASTING LARGE DATASETS WITH BAYESIAN REDUCED RANK MULTIVARIATE MODELS
    Carriero, Andrea
    Kapetanios, George
    Marcellino, Massimiliano
    JOURNAL OF APPLIED ECONOMETRICS, 2011, 26 (05) : 735 - 761
  • [48] LEARNING LOW RANK AND SPARSE MODELS VIA ROBUST AUTOENCODERS
    Pu, Jie
    Panagakis, Yannis
    Pantic, Maja
    2019 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2019, : 3192 - 3196
  • [49] A sparse matrix approach to Bayesian computation in large linear models
    Wilkinson, DJ
    Yeung, SK
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2004, 44 (03) : 493 - 516
  • [50] Parallel inference for massive distributed spatial data using low-rank models
    Katzfuss, Matthias
    Hammerling, Dorit
    STATISTICS AND COMPUTING, 2017, 27 (02) : 363 - 375