共同特征的检验

Testing for Common Features

Journal of Business & Economic Statistics · 1993
被引 230 · 同刊同年前 7%
人大 AABS 4

中文导读

提出一类统计检验,用于判断多个变量是否共享某种特征(如序列相关、趋势、季节性等),通过寻找使特征消失的线性组合来构造检验,并给出临界值的理论界限。

Abstract

This paper introduces a class of statistical tests for the hypothesis that some feature of a data set is common to several variables. A feature is detected in a single series by a hypothesis test where the null is that it is absent, and the alternative is that it is present. Examples are serial correlation, trends, seasonality, heteroskedasticity, ARCH, excess kurtosis and many others. A feature is common to a multivariate data set if a linear combination of the series no longer has the feature. A test for common features can be based on the minimized value of the feature test over all linear combinations of the data. A bound on the distribution for such a test is developed in the paper. For many important cases, an exact asymptotic critical value can be obtained which is simply a test of overidentifying restrictions in an instrumental variable regression.

共同特征检验线性组合过度识别约束工具变量回归