Variable dimension via stochastic volatility model using FX rates

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Abstract

In this paper, changepoint analysis is applied to stochastic volatility (SV) models which aim to understand the locations and movements of high frequency FX financial time series. Bayesian inference using the Markov Chain Monte Carlo method is performed using a process called variable dimension for SV parameters. Interesting results are that FX series have locations where one or more positions of the sequence correspond to systemic changes, and overall non-stationarity, in the returns process. Furthermore, we found that the changepoint locations provide an informative estimate for all FX series. Importantly in most cases, the detected changepoints can be identified with economic factors relevant to the country concerned. This helps support the fact that macroeconomics news and the movement in financial price are positively related. © 2013 Copyright © 2013 The Author. Published by Taylor & Francis.

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APA

Surapaitoolkorn, W. (2013). Variable dimension via stochastic volatility model using FX rates. Journal of Applied Statistics, 40(10), 2110–2128. https://doi.org/10.1080/02664763.2013.807330

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