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首页> 外文期刊>International journal of forecasting >Predictive densities for models with stochastic regressors and inequality constraints: Forecasting local-area wheat yield
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Predictive densities for models with stochastic regressors and inequality constraints: Forecasting local-area wheat yield

机译:具有随机回归和不平等约束的模型的预测密度:预测局域小麦产量

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Forecasts from regression models are frequently made conditional on a set of values for the regressor variables. We describe and illustrate how to obtain forecasts when some of those regressors are stochastic and their values have not yet been realized. The forecasting device is a Bayesian predictive density which accommodates variability from an unknown error term, uncertainty from unknown coefficients, and uncertainty from unknown stochastic regressors. We illustrate how the predictive density of a forecast changes as more regressors are observed and therefore fewer are unobserved. An example where the local-area wheat yield depends on the rainfall during three periods - germination, growing and flowering - is used to illustrate the methods. Both a noninformative prior and a prior with inequality restrictions on the regression coefficients are considered. The results show how the predictive density changes as more rainfall information becomes available.
机译:回归模型的预测通常以回归变量的一组值为条件。我们描述和说明了当其中一些回归变量是随机的并且其值尚未实现时如何获得预测。预测设备是贝叶斯预测密度,它可以适应未知误差项的可变性,未知系数的不确定性和随机回归变量的不确定性。我们说明了随着观察到更多的回归指标,因此观察不到回归指标的预测密度如何变化。以一个例子来说明该方法,在该例子中,本地小麦的产量取决于三个时期(发芽,生长和开花)的降雨量。同时考虑非信息先验和对回归系数具有不等式限制的先验。结果表明,随着更多降雨信息的获得,预测密度将如何变化。

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