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Evolving Spatially Aggregated Features from Satellite Imagery for Regional Modeling

机译:从用于区域建模的卫星图像的空间汇总特征

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Satellite imagery and remote sensing provide explanatory variables at relatively high resolutions for modeling geospatial phenomena, yet regional summaries are often desirable for analysis and actionable insight. In this paper, we propose a novel method of inducing spatial aggregations as a component of the machine learning process, yielding regional model features whose construction is driven by model prediction performance rather than prior assumptions. Our results demonstrate that Genetic Programming is particularly well suited to this type of feature construction because it can automatically synthesize appropriate aggregations, as well as better incorporate them into predictive models compared to other regression methods we tested. In our experiments we consider a specific problem instance and real-world dataset relevant to predicting snow properties in high-mountain Asia.
机译:卫星图像和遥感提供了在造型地理空间现象的相对高分辨率中提供了解释性变量,但是区域摘要通常是可取的分析和可操作的洞察力。在本文中,我们提出了一种诱导空间聚集作为机器学习过程的组件的新方法,产生区域模型特征,其结构由模型预测性能而不是先前的假设。我们的结果表明,与我们测试的其他回归方法相比,遗传编程特别适合于这种类型的特征结构,因为它可以自动综合合成适当的聚合,并更好地将它们与预测模型相比纳入预测模型。在我们的实验中,我们考虑了一个特定的问题实例和现实世界数据集,与预测高山亚洲的雪属性。

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