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A model to predict ordinal suitability using sparse and uncertain data.

机译:使用稀疏和不确定数据来预测序数适用性的模型。

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We describe the development of the algorithms that comprise the Spatial Decision Support System (SDSS) CaNaSTA (Crop Niche Selection in Tropical Agriculture). The system was designed to assist farmers and agricultural advisors in the tropics to make crop suitability decisions. These decisions are frequently made in highly diverse biophysical and socioeconomic environments and must often rely on sparse datasets. The field trial datasets that provide a knowledge base for SDSS such as this are characterised by ordinal response variables. Our approach has been to apply Bayes' formula as a prediction model. This paper does not describe the entire CaNaSTA system, but rather concentrates on the algorithm of the central prediction model. The algorithm is tested using a simulated dataset to compare results with ordinal regression, and to test the stability of the model with increasingly sparse calibration data. For all but the richest input datasets it outperforms ordinal regression, as determined using Cohen's weighted kappa. The model also performs well with sparse datasets. Whilst this is not as conclusive as testing with real world data, the results are encouraging.
机译:我们描述了包括空间决策支持系统(SDSS)CaNaSTA(热带农业中的作物生态位选择)的算法的开发。该系统旨在帮助热带地区的农民和农业顾问做出适合作物的决策。这些决定通常是在高度多样化的生物物理和社会经济环境中做出的,并且通常必须依赖稀疏的数据集。提供诸如此类的SDSS知识库的现场试验数据集的特征在于顺序响应变量。我们的方法是将贝叶斯公式用作预测模型。本文没有描述整个CaNaSTA系统,而是集中在中央预测模型的算法上。使用模拟数据集对算法进行测试,以将结果与有序回归进行比较,并使用越来越稀疏的校准数据测试模型的稳定性。对于除最丰富输入数据集之外的所有数据集,其性能均优于使用Cohen加权kappa确定的有序回归。该模型在稀疏数据集上也表现良好。尽管这并不像对真实数据进行测试那样确定,但结果令人鼓舞。

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