University of Wollongong
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Spatial data compression via adaptive dispersion clustering

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posted on 2024-11-16, 04:50 authored by Yuliya Marchetti, Hai Nguyen, Amy Braverman, Noel CressieNoel Cressie
Spatial Dispersion Clustering (ASDC), a new method of spatial data compression, is specifically designed to reduce the size of a spatial dataset in order to facilitate subsequent spatial prediction. Unlike traditional data and image compression methods, the goal of ASDC is to create a new dataset that will be used as input into spatial-prediction methods, such as traditional kriging or Fixed Rank Kriging, where using the full dataset may be computationally infeasible. ASDC can be classified as a lossy compression method and is based on spectral clustering. It aims to produce contiguous spatial clusters and to preserve the spatial-correlation structure of the data so that the loss of predictive information is minimal. An extensive simulation study demonstrates the predictive performance of these adaptively compressed datasets for several scenarios. ASDC is compared to two other data-reduction schemes, one using local neighborhoods and one using simple binning. An application to remotely sensed sea-surface-temperature data is also presented, and computational costs are discussed.

Funding

Spatio-Temporal Statistics and its Application to Remote Sensing

Australian Research Council

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Citation

Marchetti, Y., Nguyen, H., Braverman, A. & Cressie, N. (2018). Spatial data compression via adaptive dispersion clustering. Computational Statistics and Data Analysis, 117 138-153.

Journal title

Computational Statistics and Data Analysis

Volume

117

Pagination

138-153

Language

English

RIS ID

116418

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