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首页> 外文期刊>Computers & geosciences >Evaluating geo-environmental variables using a clustering based areal model
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Evaluating geo-environmental variables using a clustering based areal model

机译:使用基于聚类的面模型评估地理环境变量

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摘要

Global regression models do not accurately reflect the spatial heterogeneity which characterises most geo-environmental variables. In analysing the relationships between such variables, an approach is required which allows the model parameters to vary spatially. This paper proposes a new framework for exploring local relationships between geo-environmental variables. The method is based on extended objective function based fuzzy clustering with the environmental parameters estimated through on a locally weighted regression analysis. The case studies and prediction evaluations show that the fuzzy algorithm yields well-fitted models and accurate predictions. In addition to an increased accuracy of prediction relative to the widely-used geographically weighted regression (GWR), the proposed algorithm provides the search radius (bandwidth) and weights for local estimation directly from the data. The results suggest that the method could be employed effectively in tackling real world kernel-based modelling problems.
机译:全局回归模型不能准确反映反映大多数地质环境变量特征的空间异质性。在分析这些变量之间的关系时,需要一种允许模型参数在空间上变化的方法。本文提出了一个探索地质环境变量之间的局部关系的新框架。该方法基于基于扩展目标函数的模糊聚类,其中环境参数是通过局部加权回归分析估算的。案例研究和预测评估表明,模糊算法可得出拟合良好的模型和准确的预测。除了相对于广泛使用的地理加权回归(GWR)而言,预测准确性有所提高外,所提出的算法还提供了直接从数据中进行局部估计的搜索半径(带宽)和权重。结果表明该方法可以有效地解决基于内核的现实世界中的建模问题。

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