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A Simple Diagnostic for Time-Series and Panel-Data Regressions


Abstract: We introduce a new regression diagnostic, tailored to time-series and panel-data regressions, which characterizes the sensitivity of the OLS estimate to distinct time-series variation at different frequencies. The diagnostic is built on the novel result that the eigenvectors of a random walk asymptotically orthogonalize a wide variety of time-series processes. Our diagnostic is based on leave-one-out OLS estimation on transformed variables using these eigenvectors. We illustrate how our diagnostic allows applied researchers to scrutinize regression results and probe for underlying fragility of the sample OLS estimate. We demonstrate the utility of our approach using a variety of empirical applications.

Keywords: leave-one-out frequency approach; regression diagnostic; relative contributions of different frequencies; high time-series persistence and spurious regressions; trigonometric basis functions; orthogonalization;

JEL Classification: C12; C13; C22; C23;

https://doi.org/10.59576/sr.1132

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Provider: Federal Reserve Bank of New York

Part of Series: Staff Reports

Publication Date: 2024-10-01

Number: 1132