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Journal Article

Second-dimension outliers for spatial prediction

AuthorsKai Ren, Yongze Song*, Qiang Yu*

JournalInternational Journal of Geographical Information Science,

https://doi.org/10.1080/13658816.2025.2580414

Overview

This paper introduces second-dimension outliers (SDO) as a new way to encode the outlier context around unsampled locations and then uses SDO-enhanced machine learning to improve spatial prediction of wheat production across Australia.

Abstract

Spatial prediction aims to accurately estimate attributes at unsampled locations based on spatial dependencies, patterns, variability, and covariates, providing knowledge of complex spatial systems and supporting diverse applications. However, existing methods for spatial prediction ignore geographic and environmental characteristics outside sample locations, particularly spatial outliers, significantly impacting prediction accuracy. This study introduces the concept of second-dimension outliers (SDO) and SDO models that incorporate local outlier information at unsampled locations to enhance prediction accuracy. SDO models generate SDO variables that capture samples' external geographic and environmental characteristics in the spatial prediction. This study develops SDO-based machine learning to predict wheat production in Australia, using cross-validation to evaluate prediction accuracy. Results demonstrate that SDO-based support vector machines (SVM) improve spatial prediction accuracy, with the R2 increasing from 0.555 to 0.671 compared to aspatial SVM, particularly for extreme values. The developed local outlier strength index that examines the strength of SDO ensures more accurate and smooth spatial predictions. The SDO concept provides more in-depth explanatory information from an innovative spatial perspective and a detailed understanding of local outliers for spatial prediction, making it a robust and effective tool for spatial statistical inference and geographic computation across various fields.

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