论文标题
具有已知系数的大规模线性系统的推断
Inference for Large-Scale Linear Systems with Known Coefficients
论文作者
论文摘要
本文考虑了测试是否存在针对具有已知系数的线性方程式可能不确定的线性系统的非负解决方案的问题。这个假设测试问题自然出现在许多环境中,包括随机系数,治疗效果和离散选择模型以及一类线性编程问题。作为第一个贡献,我们根据满足无限不平等限制集的确定参数来获得无效假设的新几何表征。使用这种表征,我们设计了一个仅求解其实施的线性程序的测试,因此在激励我们的分析的高维应用中仍然可以在计算上可行。拟议的测试的渐近大小显示在大多数标称水平上在大量的分布上均匀地等于标称水平,该分布允许线性方程数随样本量而生长。
This paper considers the problem of testing whether there exists a non-negative solution to a possibly under-determined system of linear equations with known coefficients. This hypothesis testing problem arises naturally in a number of settings, including random coefficient, treatment effect, and discrete choice models, as well as a class of linear programming problems. As a first contribution, we obtain a novel geometric characterization of the null hypothesis in terms of identified parameters satisfying an infinite set of inequality restrictions. Using this characterization, we devise a test that requires solving only linear programs for its implementation, and thus remains computationally feasible in the high-dimensional applications that motivate our analysis. The asymptotic size of the proposed test is shown to equal at most the nominal level uniformly over a large class of distributions that permits the number of linear equations to grow with the sample size.