Estimating turning points using large data sets
Published
2010
Publisher
National Bureau of Economic Research
Description
"Dating business cycles entails ascertaining economy-wide turning points. Broadly speaking, there are two approaches in the literature. The first approach, which dates to Burns and Mitchell (1946), is to identify turning points individually in a large number of series, then to look for a common date that could be called an aggregate turning point. The second approach, which has been the focus of more recent academic and applied work, is to look for turning points in a few, or just one, aggregate. This paper examines these two approaches to the identification of turning points. We provide a nonparametric definition of a turning point (an estimand) based on a population of time series. This leads to estimators of turning points, sampling distributions, and standard errors for turning points based on a sample of series. We consider both simple random sampling and stratified sampling. The empirical part of the analysis is based on a data set of 270 disaggregated monthly real economic time series for the U.S., 1959-2010"--National Bureau of Economic Research web site.
Frequently Asked Questions
Who is the author of Estimating turning points using large data sets?
Estimating turning points using large data sets was written by James H. Stock.
When was Estimating turning points using large data sets published?
The publication date for this specific edition is 2010. The original work may have been published on a different date.