Litcius/Paper detail

Testing for Common Trends in Nonstationary Large Datasets

Matteo Barigozzi, Lorenzo Trapani

2021Journal of Business and Economic Statistics20 citationsDOIOpen Access PDF

Abstract

We propose a testing-based procedure to determine the number of common trends in a large nonstationary dataset. Our procedure is based on a factor representation, where we determine whether there are (and how many) common factors (i) with linear trends, and (ii) with stochastic trends. Cointegration among the factors is also permitted. Our analysis is based on the fact that those largest eigenvalues of a suitably scaled covariance matrix of the data corresponding to the common factor part diverge, as the dimension N of the dataset diverges, whilst the others stay bounded. Therefore, we propose a class of randomized test statistics for the null that the pth largest eigenvalue diverges, based directly on the estimated eigenvalue. The tests only requires minimal assumptions on the data-generating process. Monte Carlo evidence shows that our procedure has very good finite sample properties, clearly dominating competing approaches when no common trends are present. We illustrate our methodology through an application to the U.S. bond yields with different maturities observed over the last 30 years.

Topics & Concepts

Eigenvalues and eigenvectorsMathematicsCointegrationMonte Carlo methodDimension (graph theory)EconometricsFactor analysisCovariance matrixStatistical hypothesis testingRepresentation (politics)Bounded functionApplied mathematicsNull hypothesisSample size determinationNull (SQL)StatisticsComputer scienceCombinatoricsData miningMathematical analysisPolitical scienceQuantum mechanicsPoliticsLawPhysicsStatistical Methods and InferenceFinancial Risk and Volatility ModelingCredit Risk and Financial Regulations