Are volatility estimators robust with respect to modeling assumptions?
We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov kernel \(Q\). Special cases include additive error, rounding and combinations thereof. Our main result is that, subject to smoothness conditions, the two scales realized volatility is...
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Published in | arXiv.org |
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Main Authors | , |
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Language | English |
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04.09.2007
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Abstract | We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov kernel \(Q\). Special cases include additive error, rounding and combinations thereof. Our main result is that, subject to smoothness conditions, the two scales realized volatility is robust to the form of contamination \(Q\). To push the limits of our result, we show what happens for some models that involve rounding (which is not, of course, smooth) and see in this situation how the robustness deteriorates with decreasing smoothness. Our conclusion is that under reasonable smoothness, one does not need to consider too closely how the microstructure is formed, while if severe non-smoothness is suspected, one needs to pay attention to the precise structure and also the use to which the estimator of volatility will be put. |
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AbstractList | We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov kernel \(Q\). Special cases include additive error, rounding and combinations thereof. Our main result is that, subject to smoothness conditions, the two scales realized volatility is robust to the form of contamination \(Q\). To push the limits of our result, we show what happens for some models that involve rounding (which is not, of course, smooth) and see in this situation how the robustness deteriorates with decreasing smoothness. Our conclusion is that under reasonable smoothness, one does not need to consider too closely how the microstructure is formed, while if severe non-smoothness is suspected, one needs to pay attention to the precise structure and also the use to which the estimator of volatility will be put. Bernoulli 2007, Vol. 13, No. 3, 601-622 We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov kernel $Q$. Special cases include additive error, rounding and combinations thereof. Our main result is that, subject to smoothness conditions, the two scales realized volatility is robust to the form of contamination $Q$. To push the limits of our result, we show what happens for some models that involve rounding (which is not, of course, smooth) and see in this situation how the robustness deteriorates with decreasing smoothness. Our conclusion is that under reasonable smoothness, one does not need to consider too closely how the microstructure is formed, while if severe non-smoothness is suspected, one needs to pay attention to the precise structure and also the use to which the estimator of volatility will be put. |
Author | Li, Yingying Mykland, Per A |
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BackLink | https://doi.org/10.3150/07-BEJ6067$$DView published paper (Access to full text may be restricted) https://doi.org/10.48550/arXiv.0709.0440$$DView paper in arXiv |
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Snippet | We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov kernel \(Q\). Special cases include... Bernoulli 2007, Vol. 13, No. 3, 601-622 We consider microstructure as an arbitrary contamination of the underlying latent securities price, through a Markov... |
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SubjectTerms | Contamination Markov processes Mathematics - Statistics Theory Microstructure Quantitative Finance - Statistical Finance Rounding Securities prices Smoothness Statistics - Theory Volatility |
Title | Are volatility estimators robust with respect to modeling assumptions? |
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