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Discovering Prediction Model for Environmental Distribution Maps

机译:环境分布图的发现预测模型

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摘要

Currently environmental distribution maps, such as for soil fertility, rainfall and foliage, are widely used in the natural resource management and policy making. One typical example is to predict the grazing capacity in particular geographical regions. This paper uses a discovering approach to choose a prediction model for real-world environmental data. The approach consists of two steps: (1) model selection which determines the type of prediction model, such as linear or non-linear; (2) model optimisation which aims at using less environmental data for prediction but without any loss on accuracy. The latter step is achieved by automatically selecting non-redundant features without using specific models. Various experimental results on real-world data illustrate that using specific linear model can work pretty well and fewer environment distribution maps can quickly make better/comparable prediction with the benefit of lower cost of data collection and computation.
机译:当前,诸如土壤肥力,降雨和树叶等环境分布图已广泛用于自然资源管理和政策制定中。一个典型的例子是预测特定地理区域的放牧能力。本文使用发现方法为现实环境数据选择预测模型。该方法包括两个步骤:(1)选择模型,该模型确定预测模型的类型,例如线性或非线性; (2)模型优化,其目的是使用较少的环境数据进行预测,但不会损失任何准确性。通过自动选择非冗余功能而不使用特定模型即可实现后一步。实际数据的各种实验结果表明,使用特定的线性模型可以很好地工作,更少的环境分布图可以快速做出更好/可比的预测,并具有降低数据收集和计算成本的优势。

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