Marco Bee
;
Debbie J. Dupuis
;
Luca Trapin
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realized extreme quantile: a joint model for conditional quantiles and measures of volatility with evt refinements (replication data)

We propose a new framework exploiting realized measures of volatility to estimate and forecast extreme quantiles. Our realized extreme quantile (REQ) combines quantile regression with extreme value theory and uses a measurement equation that relates the realized measure to the latent conditional quantile. Model estimation is performed by quasi maximum likelihood, and a simulation experiment validates this estimator in finite samples. An extensive empirical analysis shows that high-frequency measures are particularly informative of the dynamic quantiles. Finally, an out-of-sample forecast analysis of quantile-based risk measures confirms the merit of the REQ.

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Suggested Citation

Bee, Marco; Dupuis, Debbie J.; Trapin, Luca (2018): Realized extreme quantile: A joint model for conditional quantiles and measures of volatility with EVT refinements (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/realized-extreme-quantile-a-joint-model-for-conditional-quantiles-and-measures-of-volatility-with-e?activity_id=0294ff8a-27cc-423c-ad92-9f937a80b5b1