Approximate inference for spatial functional data on massively parallel processors

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Standard

Approximate inference for spatial functional data on massively parallel processors. / Raket, Lars Lau; Markussen, Bo.

I: Computational Statistics & Data Analysis, Bind 72, 2014, s. 227-240.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Raket, LL & Markussen, B 2014, 'Approximate inference for spatial functional data on massively parallel processors', Computational Statistics & Data Analysis, bind 72, s. 227-240. https://doi.org/10.1016/j.csda.2013.10.016

APA

Raket, L. L., & Markussen, B. (2014). Approximate inference for spatial functional data on massively parallel processors. Computational Statistics & Data Analysis, 72, 227-240. https://doi.org/10.1016/j.csda.2013.10.016

Vancouver

Raket LL, Markussen B. Approximate inference for spatial functional data on massively parallel processors. Computational Statistics & Data Analysis. 2014;72:227-240. https://doi.org/10.1016/j.csda.2013.10.016

Author

Raket, Lars Lau ; Markussen, Bo. / Approximate inference for spatial functional data on massively parallel processors. I: Computational Statistics & Data Analysis. 2014 ; Bind 72. s. 227-240.

Bibtex

@article{e370f3c2f3554ddbb44d45f01169e8de,
title = "Approximate inference for spatial functional data on massively parallel processors",
abstract = "With continually increasing data sizes, the relevance of the big n problem of classical likelihood approaches is greater than ever. The functional mixed-effects model is a well established class of models for analyzing functional data. Spatial functional data in a mixed-effects setting is considered, and so-called operator approximations for doing inference in the resulting models are presented. These approximations embed observations in function space, transferring likelihood calculations to the functional domain. The resulting approximated problems are naturally parallel and can be solved in linear time. An extremely efficient GPU implementation is presented, and the proposed methods are illustrated by conducting a classical statistical analysis of 2D chromatography data consisting of more than 140 million spatially correlated observation points.",
author = "Raket, {Lars Lau} and Bo Markussen",
year = "2014",
doi = "10.1016/j.csda.2013.10.016",
language = "English",
volume = "72",
pages = "227--240",
journal = "Computational Statistics and Data Analysis",
issn = "0167-9473",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Approximate inference for spatial functional data on massively parallel processors

AU - Raket, Lars Lau

AU - Markussen, Bo

PY - 2014

Y1 - 2014

N2 - With continually increasing data sizes, the relevance of the big n problem of classical likelihood approaches is greater than ever. The functional mixed-effects model is a well established class of models for analyzing functional data. Spatial functional data in a mixed-effects setting is considered, and so-called operator approximations for doing inference in the resulting models are presented. These approximations embed observations in function space, transferring likelihood calculations to the functional domain. The resulting approximated problems are naturally parallel and can be solved in linear time. An extremely efficient GPU implementation is presented, and the proposed methods are illustrated by conducting a classical statistical analysis of 2D chromatography data consisting of more than 140 million spatially correlated observation points.

AB - With continually increasing data sizes, the relevance of the big n problem of classical likelihood approaches is greater than ever. The functional mixed-effects model is a well established class of models for analyzing functional data. Spatial functional data in a mixed-effects setting is considered, and so-called operator approximations for doing inference in the resulting models are presented. These approximations embed observations in function space, transferring likelihood calculations to the functional domain. The resulting approximated problems are naturally parallel and can be solved in linear time. An extremely efficient GPU implementation is presented, and the proposed methods are illustrated by conducting a classical statistical analysis of 2D chromatography data consisting of more than 140 million spatially correlated observation points.

U2 - 10.1016/j.csda.2013.10.016

DO - 10.1016/j.csda.2013.10.016

M3 - Journal article

VL - 72

SP - 227

EP - 240

JO - Computational Statistics and Data Analysis

JF - Computational Statistics and Data Analysis

SN - 0167-9473

ER -

ID: 74861895