Simultaneous Mean-Variance Regression

R. Spady, S. Stouli
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引用次数: 6

Abstract

We propose simultaneous mean-variance regression for the linear estimation and approximation of conditional mean functions. In the presence of heteroskedasticity of unknown form, our method accounts for varying dispersion in the regression outcome across the support of conditioning variables by using weights that are jointly determined with the mean regression parameters. Simultaneity generates outcome predictions that are guaranteed to improve over ordinary least-squares prediction error, with corresponding parameter standard errors that are automatically valid. Under shape misspecification of the conditional mean and variance functions, we establish existence and uniqueness of the resulting approximations and characterize their formal interpretation and robustness properties. In particular, we show that the corresponding mean-variance regression location-scale model weakly dominates the ordinary least-squares location model under a Kullback-Leibler measure of divergence, with strict improvement in the presence of heteroskedasticity. The simultaneous mean-variance regression loss function is globally convex and the corresponding estimator is easy to implement. We establish its consistency and asymptotic normality under misspecification, provide robust inference methods, and present numerical simulations that show large improvements over ordinary and weighted least-squares in terms of estimation and inference in finite samples. We further illustrate our method with two empirical applications to the estimation of the relationship between economic prosperity in 1500 and today, and demand for gasoline in the United States.
同时均值-方差回归
对于条件均值函数的线性估计和逼近,我们提出了同时均值-方差回归。在存在未知形式的异方差的情况下,我们的方法通过使用与平均回归参数共同确定的权重来解释在条件变量支持下回归结果的不同离散度。同时性生成的结果预测保证优于普通的最小二乘预测误差,并具有自动有效的相应参数标准误差。在条件均值和条件方差函数的形状错误规范下,我们建立了结果近似的存在唯一性,并表征了它们的形式解释和鲁棒性。特别是,在Kullback-Leibler散度度量下,相应的均方差回归位置尺度模型弱优于普通最小二乘位置模型,在存在异方差的情况下有严格的改进。同时均方差回归损失函数是全局凸的,相应的估计量易于实现。我们建立了它在错误规范下的一致性和渐近正态性,提供了鲁棒推理方法,并给出了在有限样本的估计和推理方面比普通和加权最小二乘有很大改进的数值模拟。我们进一步用两个实证应用来说明我们的方法,以估计1500年和今天的经济繁荣与美国汽油需求之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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