Detecting bubbles via FDR and FNR based on calibrated p-values

Giulia Genoni, Piero Quatto, Gianmarco Vacca*

*Corresponding author

Research output: Contribution to journalArticle

Abstract

Detecting bubbles in asset prices is still an open question that has attracted considerable attention in recent years. This paper improves the bubble detection and dating approaches developed in recent years by Phillips and co-authors, proposing to assess the plausibility of its outcomes via the false discovery rate (FDR) and the false non-discovery rate (FNR) based on calibrated p-values. Calibrating p-values of unit root tests, applied sequentially to detect bubbles, allows recovery of their super-uniformity property, which is crucial for a valid implementation of the inferential procedure. The paper also develops original self-calibrated versions of both FDR and FNR for the specific problem of bubble testing. Calibrated p-values are implemented in an online false discovery-based approach which monitors bubbles in real time. The effectiveness of the proposed methods is investigated via a simulation study and an empirical application.
Original languageEnglish
Pages (from-to)1463-1491
Number of pages29
JournalQuantitative Finance
Volume24
DOIs
Publication statusPublished - 2024

Keywords

  • Bubble dating
  • False discovery rate
  • False non-discovery rate
  • Online multiple tests
  • Unit root test

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