面板数据中的结构断点:大面板数与短时间序列

Structural breaks in panel data: Large number of panels and short length time series

Econometric Reviews · 2018
被引 72 · 同刊同年前 5%
人大 A-ABS 3

中文导读

研究了面板数N大而时间长度T固定时结构断点的检测问题,提出检验统计量及其渐近性质,并用自助法生成临界值,通过模拟和四因子CAPM模型实证验证。

Abstract

The detection of (structural) breaks or the so called change point problem has drawn increasing attention from the theoretical, applied economic and financial fields. Much of the existing research concentrates on the detection of change points and asymptotic properties of their estimators in panels when N, the number of panels, as well as T, the number of observations in each panel are large. In this paper we pursue a different approach, i.e., we consider the asymptotic properties when N→∞ while keeping T fixed. This situation is typically related to large (firm-level) data containing financial information about an immense number of firms/stocks across a limited number of years/quarters/months. We propose a general approach for testing for break(s) in this setup. In particular, we obtain the asymptotic behavior of test statistics. We also propose a wild bootstrap procedure that could be used to generate the critical values of the test statistics. The theoretical approach is supplemented by numerous simulations and by an empirical illustration. We demonstrate that the testing procedure works well in the framework of the four factors CAPM model. In particular, we estimate the breaks in the monthly returns of US mutual funds during the period January 2006 to February 2010 which covers the subprime crises.

面板数据结构断点短时间序列大N小T