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Modeling and predicting the CBOE market volatility index

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TD 342 - CEQEF 10 - Marcelo Fernandes - Marcelo C. Medeiros - Marcel Scharth.pdf (922.1Kb)
Date
2013-12-09
Author
Fernandes, Marcelo
Medeiros, Marcelo C.
Scharth, Marcel
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Abstract
This paper performs a thorough statistical examination of the time-series properties of the daily market volatility index (VIX) from the Chicago Board Options Exchange (CBOE). The motivation lies not only on the widespread consensus that the VIX is a barometer of the overall market sentiment as to what concerns investors' risk appetite, but also on the fact that there are many trading strategies that rely on the VIX index for hedging and speculative purposes. Preliminary analysis suggests that the VIX index displays long-range dependence. This is well in line with the strong empirical evidence in the literature supporting long memory in both options-implied and realized variances. We thus resort to both parametric and semiparametric heterogeneous autoregressive (HAR) processes for modeling and forecasting purposes. Our main ndings are as follows. First, we con rm the evidence in the literature that there is a negative relationship between the VIX index and the S&P 500 index return as well as a positive contemporaneous link with the volume of the S&P 500 index. Second, the term spread has a slightly negative long-run impact in the VIX index, when possible multicollinearity and endogeneity are controlled for. Finally, we cannot reject the linearity of the above relationships, neither in sample nor out of sample. As for the latter, we actually show that it is pretty hard to beat the pure HAR process because of the very persistent nature of the VIX index.
URI
http://hdl.handle.net/10438/11333
Collections
  • FGV EESP - Textos para Discussão / Working Paper Series [534]
Knowledge Areas
Economia
Subject
Economia
Keyword
heterogeneous autoregression
Implied volatility
Neural networks
VIX

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