Pervasive impact of spatial dependence on predictability

Peng Luo, Yongze Song, Wenwen Li, Liqiu Meng
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Abstract

Understanding the complex nature of spatial information is crucial for problem solving in social and environmental sciences. This study investigates how the underlying patterns of spatial data can significantly influence the outcomes of spatial predictions. Recognizing unique characteristics of spatial data, such as spatial dependence and spatial heterogeneity, we delve into the fundamental differences and similarities between spatial and non-geospatial prediction models. Through the analysis of six different datasets of environment and socio-economic variables, comparing geospatial models with non-geospatial models, our research highlights the pervasive nature of spatial dependence beyond geographical boundaries. This innovative approach not only recognizes spatial dependence in geographic spaces defined by latitude and longitude but also identifies its presence in non-geographic, attribute-based dimensions. Our findings reveal the pervasive influence of spatial dependence on prediction outcomes across various domains, and spatial dependence significantly influences prediction performance across all spaces. Our findings suggest that the strongest spatial dependence is typically found in geographic space for environment variables, a trend that does not uniformly apply to socio-economic variables. This investigation not only advances the theoretical framework for spatial data analysis, but also proposes new methodologies for accurately capturing and expressing spatial dependence under complex conditions. Our research extends spatial analysis to non-geographic dimensions such as social networks and gene expression patterns, emphasizing the role of spatial dependence in improving prediction accuracy, thereby supporting interdisciplinary applications across fields such as geographic information science, environmental science, economics, sociology, and bioinformatics.
空间依赖性对可预测性的普遍影响
了解空间信息的复杂性对于解决社会和环境科学中的问题至关重要。本研究探讨了空间数据的基本模式如何显著影响空间预测的结果。认识到空间数据的独特性,如空间依赖性和空间异质性,我们深入探讨了空间和非地理空间预测模型之间的基本异同。通过分析环境和社会经济变量的六个不同数据集,比较地理空间模型和非地理空间模型,我们的研究突出了空间依赖性超越地理边界的普遍性。这种创新方法不仅识别了由经纬度定义的地理空间中的空间依赖性,还识别了其在非地理、基于属性维度中的存在。我们的研究结果揭示了空间依赖性对各领域预测结果的普遍影响,空间依赖性对所有空间的预测结果都有显著影响。我们的研究结果表明,环境变量通常在地理空间中具有最强的空间依赖性,但这一趋势并不完全适用于社会经济变量。这项研究不仅推进了空间数据分析的理论框架,还提出了在复杂条件下准确捕捉和表达空间依赖性的新方法。我们的研究将空间分析扩展到了社会网络和基因表达模式等非地理维度,强调了空间依赖性在提高预测准确性方面的作用,从而支持了地理信息科学、环境科学、经济学、社会学和生物信息学等领域的跨学科应用。
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