Worapree Maneesoonthorn
;
Catherine S. Forbes
;
Gael M. Martin
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inference on self‐exciting jumps in prices and volatility using high‐frequency measures (replication data)

Dynamic jumps in the price and volatility of an asset are modelled using a joint Hawkes process in conjunction with a bivariate jump diffusion. A state-space representation is used to link observed returns, plus nonparametric measures of integrated volatility and price jumps, to the specified model components, with Bayesian inference conducted using a Markov chain Monte Carlo algorithm. An evaluation of marginal likelihoods for the proposed model relative to a large number of alternative models, including some that have featured in the literature, is provided. An extensive empirical investigation is undertaken using data on the S&P 500 market index over the 1996-2014 period, with substantial support for dynamic jump intensities-including in terms of predictive accuracy-documented.

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Suggested Citation

Maneesoonthorn, Worapree; Forbes, Catherine S.; Martin, Gael M. (2017): Inference on Self‐Exciting Jumps in Prices and Volatility Using High‐Frequency Measures (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/inference-on-selfexciting-jumps-in-prices-and-volatility-using-highfrequency-measures?activity_id=ad9ac21c-b5c5-4f90-88ae-1ade3344d365