多条件变量随机优势检验

O. Linton, M. Seo, Yoon-Jae Whang
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引用次数: 1

摘要

我们提出了在存在许多条件变量(其维度可能随着样本量的发散而增长到无穷大)的情况下条件随机优势假设的检验。我们的方法建立在半参数位置尺度模型的基础上,即给定协变量的结果的条件分布具有非参数平均函数和非参数标准差函数的特征,其中独立创新的分布是未知的。我们提出用带有阈值的1惩罚非参数序列估计来估计非参数均值和偏方差回归函数。在稀疏性假设下,真正相关的序列项的数量相对较少(但它们的身份未知),我们开发了回归函数和序列系数估计的估计误差界限,允许时间序列依赖。我们导出了检验统计量的渐近分布,并引入光滑平稳自举来近似其样本分布。我们通过一组蒙特卡罗模拟研究了自举临界值的有限样本性能。最后,通过一个给定所有过去信息的投资组合收益随机优势的应用来说明我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing Stochastic Dominance with Many Conditioning Variables
We propose a test of the hypothesis of conditional stochastic dominance in the presence of many conditioning variables (whose dimension may grow to infinity as the sample size diverges). Our approach builds on a semiparametric location scale model in the sense that the conditional distribution of the outcome given the covariates is characterized by a nonparametric mean function and a nonparametric skedastic function with an independent innovation whose distribution is unknown. We propose to estimate the nonparametric mean and skedastic regression functions by the `1-penalized nonparametric series estimation with thresholding. Under the sparsity assumption, where the number of truly relevant series terms are relatively small (but their identities are unknown), we develop the estimation error bounds for the regression functions and series coefficients estimates allowing for the time series dependence. We derive the asymptotic distribution of the test statistic, which is not pivotal asymptotically, and introduce the smooth stationary bootstrap to approximate its sample distribution. We investigate the finite sample performance of the bootstrap critical values by a set of Monte Carlo simulations. Finally, our method is illustrated by an application to stochastic dominance among portfolio returns given all the past information.
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