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Accounting for model uncertainty in prediction of chlorophyll a in Lake Okeechobee

机译:奥基乔比湖叶绿素a预测模型不确定性的解释

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Long-term eutrophication data along with water quality measurements (total phosphorous and total nitrogen) and other physical environmental factors such as lake level (stage), water temperature, wind speed, and direction were used to develop a modelto predict chlorophyll a concentrations in Lake Okeechobee. The semiparametric model included each of the potential explanatory variables as linear predictors, regression spline predictors, or product spline interactions allowing for nonlinear relationships. A Gibbs sampler was used to traverse the model space. Predictions that incorporate uncertainty about inclusion of variables and their functional forms were obtained using Bayesian model averaging (BMA) over the sampled models. Semiparametric regression with Bayesian model averaging and spline interactions provides a flexible framework for addressing the problems of nonlinearity and counterintuitive total phosphorus function estimates identified in previous statistical models. The use of regressionsplines allows nonlinear effects to be manifest, while their extension allows inclusion of interactions for which the mathematical form cannot be specified a priori. Prediction intervals under BMA provided better coverage for new observations than confidence intervals for ordinary least squares models obtained using backwards selection. Also, BMA was more efficient than ordinary least squares in terms of predictive mean squared error for overall lake predictions.
机译:长期富营养化数据以及水质测量值(总磷和总氮)以及其他物理环境因素(例如湖泊水位(阶段),水温,风速和方向)被用于开发模型来预测湖泊中叶绿素a的浓度奥基乔比。半参数模型包括每个潜在的解释变量,例如线性预测变量,回归样条预测变量或乘积样条相互作用,从而实现了非线性关系。使用Gibbs采样器遍历模型空间。在样本模型上使用贝叶斯模型平均(BMA)获得了包含有关变量及其函数形式的不确定性的预测。使用贝叶斯模型平均和样条相互作用的半参数回归提供了一个灵活的框架,用于解决先前统计模型中确定的非线性和总磷函数估计值违反直觉的问题。回归样条的使用使非线性效应得以显现,而其扩展则允许包含无法先验指定数学形式的相互作用。与使用向后选择获得的普通最小二乘模型的置信区间相比,BMA下的预测区间为新观察提供了更好的覆盖范围。而且,就总体湖泊预测而言,BMA比普通最小二乘法更有效。

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