在GAMLSS框架下的南里奥格兰德州大豆产值

Tatiane Fontana Ribeiro, E. Seidel, R. Guerra, Fernando A. Peña-Ramírez, A. M. D. Silva
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引用次数: 0

摘要

在本文中,我们考虑了南里奥格兰德州最近的大豆生产数据(2017年和2018年),并通过广义加性位置、规模和形状模型(GAMLSS)方法获得回归模型,并提供了一个仪表板作为所考虑变量的可视化工具。采用两个模型来解释和预测大豆产值作为协变量的函数,如生产数量、企业数量和RS每个城市的平均产量。考虑验证和交叉验证方法来评估拟合模型提供的预测是否可靠。2017年数据的拟合模型提供了最好的预测。GAMLSS框架可能比线性回归更准确地处理与大豆生产有关的模型数据,使它们成为一个可靠和有用的来源,以辅助农民和经济部门管理者做出决策。
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Soybean production value in the Rio Grande do Sul under the GAMLSS framework
Abstract In this article, we consider the more recent soybean production data in Rio Grande do Sul (years 2017 and 2018) and obtain regression models through the generalized additive models for location, scale, and shape (GAMLSS) approach, and provide a dashboard as a visualization tool of the considered variables. Two models are applied to explain and predict the soybean production value as a function of the covariates, such as produced quantity, number of establishments, and average yield in each city of RS. Validation and cross-validation methods are considered to assess whether the predictions provided by the fitted models are reliable. The fitted model with data of 2017 provides the best predictions. The GAMLSS framework may be more accurate than linear regression to model data related to soybean production, constituting them in a reliable and useful source to auxiliary the farmers and economic sector managers in making decisions.
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