This paper argues that the symmetrisability condition in Tyler(1981) is not necessary to establish asymptotic inference procedures for eigenvectors. We establish distribution theory for a Wald and t-test for full-vector and individual coefficient hypotheses, respectively. Our test statistics originate from eigenprojections of non-symmetric matrices. Representing projections as a mapping from the underlying matrix to its spectral data, we find derivatives through analytic perturbation theory. These results demonstrate how the analytic perturbation theory of Sun(1991) is a useful tool in multivariate statistics and are of independent interest. As an application, we define confidence sets for Bonacich centralities estimated from adjacency matrices induced by directed graphs.
翻译:本文认为Tyler(1981)中的对称条件并非推导特征向量渐近推断程序所必需。我们建立了 Wald 和 t 检验的分布理论,用于全向量和个体系数假设检验。我们的检验统计量来自于非对称矩阵的特征投影。将投影表示为从基础矩阵到其频谱数据的映射,我们通过解析摄动理论找到了导数。这些结果展示了Sun(1991)的解析摄动理论在多元统计中是一个有用的工具,并具有独立的兴趣。作为应用,我们定义了置信区间,用于从有向图诱导的邻接矩阵中估计Bonacich中心性。