This paper develops a uniformly valid and asymptotically nonconservative test based on projection for a class of shape restrictions. The key insight we exploit is that these restrictions form convex cones, a simple and yet elegant structure that has been barely harnessed in the literature. Based on a monotonicity property afforded by such a geometric structure, we construct a bootstrap procedure that, unlike many studies in nonstandard settings, dispenses with estimation of local parameter spaces, and the critical values are obtained in a way as simple as computing the test statistic. Moreover, by appealing to strong approximations, our framework accommodates nonparametric regression models as well as distributional/density-related and structural settings. Since the test entails a tuning parameter (due to the nonstandard nature of the problem), we propose a data-driven choice and prove its validity. Monte Carlo simulations confirm that our test works well.
翻译:本文根据对某类形状限制的预测,发展出一个统一有效且无症状的非保守性测试。 我们利用的关键洞察力是,这些限制形成曲线锥,这是一种简单而优雅的结构,在文献中几乎未加以利用。基于这种几何结构提供的单一性属性,我们构建了一个靴套程序,与许多非标准设置的研究不同,它排除了对当地参数空间的估计,关键值的获取方式与计算测试统计数据一样简单。此外,通过呼吁强烈近似,我们的框架包含非参数回归模型以及分布/密度相关和结构设置。由于测试需要调整参数(由于问题的非标准性质),我们提出数据驱动的选择并证明其有效性。蒙特卡洛模拟证实我们的测试效果良好。