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Spatial Variable Importance Assessment for Yield Prediction in Precision Agriculture

机译:精准农业产量预测的空间变量重要性评估

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Precision Agriculture applies state-of-the-art GPS technology in connection with site-specific, sensor-based crop management. It can also be described as a data-driven approach to agriculture, which is strongly connected with a number of data mining problems. One of those is also an inherently important task in agriculture: yield prediction. Given a yield prediction model, which of the predictor variables are the important ones? In the past, a number of approaches have been proposed towards this problem. For yield prediction, a broad variety of regression models for non-spatial data can be adapted for spatial data using a novel spatial cross-validation technique. Since this procedure is at the core of variable importance assessment, it will be briefly introduced here. Given this spatial yield prediction model, a novel approach towards assessing a variable's importance will be presented. It essentially consists of picking each of the predictor variables, one at a time, permutating its values in the test set and observing the deviation of the model's RMSE. This article uses two real-world data sets from precision agriculture and evaluates the above procedure.
机译:精准农业将最先进的GPS技术与特定地点的基于传感器的作物管理结合使用。它也可以被描述为一种以数据为驱动的农业方法,它与许多数据挖掘问题紧密相关。其中之一也是农业固有的重要任务:产量预测。给定产量预测模型,哪些预测变量是重要变量?过去,已经提出了许多解决该问题的方法。对于产量预测,可以使用新颖的空间交叉验证技术将多种非空间数据的回归模型改编为空间数据。由于此程序是变量重要性评估的核心,因此这里将简要介绍。给定这种空间产量预测模型,将提出一种评估变量重要性的新颖方法。它本质上包括一次选择每个预测变量,在测试集中排列其值并观察模型的RMSE偏差。本文使用了两个来自精确农业的真实数据集,并对上述过程进行了评估。

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