Estimating the conditional quantile of the interested variable with respect to changes in the covariates is frequent in many economical applications as it can offer a comprehensive insight. In this paper, we propose a novel semiparametric model averaging to predict the conditional quantile even if all models under consideration are potentially misspecified. Specifically, we first build a series of non-nested partially linear sub-models, each with different nonlinear component. Then a leave-one-out cross-validation criterion is applied to choose the model weights. Under some regularity conditions, we have proved that the resulting model averaging estimator is asymptotically optimal in terms of minimizing the out-of-sample average quantile prediction error. Our modelling strategy not only effectively avoids the problem of specifying which a covariate should be nonlinear when one fits a partially linear model, but also results in a more accurate prediction than traditional model-based procedures because of the optimality of the selected weights by the cross-validation criterion. Simulation experiments and an illustrative application show that our proposed model averaging method is superior to other commonly used alternatives.
翻译:在许多经济应用中,估计与共变值变化有关的相关变量的有条件量化是常见的,因为它能够提供全面的洞察力。在本文中,我们提出了一个新的半参数模型,平均预测有条件量化值,即使考虑中的所有模型都可能有误解。具体地说,我们首先建立一系列非净化部分线性子模型,每个模型都有不同的非线性成分。然后,在选择模型加权数时,适用一个放任一次性交叉校验标准。在某些常规条件下,我们已经证明,所产生的平均估计值模型在尽可能减少超模平均孔数预测错误方面是暂时最佳的。我们的建模战略不仅有效避免了在符合部分线性模型时说明哪些共变数应该是非线性的问题,而且还导致比传统的模型程序更准确的预测,因为交叉校准标准所选定的加权数是最佳的。模拟实验和说明性应用表明,我们拟议的模型平均率方法优于其他常用的替代方法。