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A Survey on Spatial Prediction Methods

机译:空间预测方法研究

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摘要

With the advancement of GPS and remote sensing technologies, large amounts of geospatial data are being collected from various domains, driving the need for effective and efficient prediction methods. Given spatial data samples with explanatory features and targeted responses (categorical or continuous) at a set of locations, the spatial prediction problem aims to learn a model that can predict the response variable based on explanatory features. The problem is important with broad applications in earth science, urban informatics, geosocial media analytics, and public health, but is challenging due to the unique characteristics of spatial data, including spatial autocorrelation, heterogeneity, limited ground truth, and multiple scales and resolutions. This paper provides a systematic review on principles and methods in spatial prediction. We provide a taxonomy of methods categorized by the key challenge they address. For each method, we introduce its underlying assumption, theoretical foundation, and discuss its advantages and disadvantages. We also discuss spatiotemporal extensions of methods. Our goal is to help interdisciplinary domain scientists choose techniques to solve their problems, and more importantly, to help data mining researchers to understand the main principles and methods in spatial prediction and identify future research opportunities.
机译:随着GPS和遥感技术的发展,正在从各个领域收集大量的地理空间数据,从而推动了对有效,高效的预测方法的需求。给定具有解释特征和在一组位置处的目标响应(类别或连续)的空间数据样本,空间预测问题旨在学习可以基于解释特征预测响应变量的模型。这个问题对于在地球科学,城市信息学,地理社会媒体分析和公共卫生中的广泛应用很重要,但是由于空间数据的独特特性(包括空间自相关,异质性,有限的地面真相以及多种尺度和分辨率)而具有挑战性。本文对空间预测的原理和方法进行了系统的综述。我们提供了按方法要解决的关键挑战分类的方法分类。对于每种方法,我们都会介绍其基本假设,理论基础,并讨论其优缺点。我们还将讨论方法的时空扩展。我们的目标是帮助跨学科领域的科学家选择解决问题的技术,更重要的是,帮助数据挖掘研究人员了解空间预测的主要原理和方法,并确定未来的研究机会。

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