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Modeling and Forecasting Realized Volatility

30 Jan 2012

Article by: Torben G. Andersen, Tim Bollerslev, Francis X. Diebold and Paul Labys
Published by: University of Pennsylvania
Date: 2002

“We provide a general framework for integration of high-frequency intraday data into the measurement,
modeling, and forecasting of daily and lower frequency return volatilities and return distributions. Most
procedures for modeling and forecasting financial asset return volatilities, correlations, and distributions
rely on potentially restrictive and complicated parametric multivariate ARCH or stochastic volatility
models. Use of realized volatility constructed from high-frequency intraday returns, in contrast, permits
the use of traditional time-series methods for modeling and forecasting. Building on the theory of
continuous-time arbitrage-free price processes and the theory of quadratic variation, we develop formal
links between realized volatility and the conditional covariance matrix. Next, using continuously
recorded observations for the Deutschemark / Dollar and Yen / Dollar spot exchange rates covering more
than a decade, we find that forecasts from a simple long-memory Gaussian vector autoregression for the
logarithmic daily realized volatilities perform admirably compared to a variety of popular daily ARCH
and more complicated high-frequency models. Moreover, the vector autoregressive volatility forecast,
coupled with a parametric lognormal-normal mixture distribution implied by the theoretically and
empirically grounded assumption of normally distributed standardized returns, produces well-calibrated
density forecasts of future returns, and correspondingly accurate quantile predictions. Our results hold
promise for practical modeling and forecasting of the large covariance matrices relevant in asset pricing,
asset allocation and financial risk management applications.”

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Posted in Realized volatility

 

The Tail in the Volatility Index

11 Jan 2012

Article by: Jian Du and Nikunj Kapadia
Published by: University of Massachusetts, Amherst
Date: May 2011

“Both volatility and the tail of the stock return distribution are impacted by discontinuities (‘large jumps’) in the stock price process. In this paper, we construct model-free volatility and tail indexes in a manner that clearly distinguishes one from the other. Our tail index measures time-variation in jump intensity, and is constructed non-parametrically from the identical set of 30-day index options used to construct a volatility index. We use the indexes to examine the relative economic importance of volatility and tail in predicting market returns over 1996-2009. Over this period, our predictability regressions indicate that the rst order impact of jumps is through stock return volatility rather than the tail of the distribution.”

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Posted in Implied volatility, Realized volatility

 

Market Risk and Model Risk for a Financial Institution Writing Options

27 Dec 2011

Article by: Stephen Figlewski, T. Clifton Green
Published by: New York University Stern School of Business
Date: 16 Nov 1998

“Trading in derivatives involves heavy use of quantitative models for valuation and risk management. These models are necessarily imperfect, and when options are involved, the models require a volatility input that must be forecasted, subject to error. This creates “model risk” to which nearly all participants in derivatives markets are exposed. In this paper, we conduct an empirical simulation, with and without hedging, using historical data from 1976-1996 for several important markets. The object is to develop a quantitative assessment of the extent to which the different sources of model risk can be expected to affect the kind of basic option writing strategy that might be followed by a bank or another financial institution. Specifically, we explore the following problem: If a bank or a similar financial institution writes standard European calls and puts and prices them using the appropriate variant of the Black-Scholes model with a volatility forecast computed optimally from historical data, what are the risk and return characteristics of the trade? More generally, what is the market and model risk exposure faced by a bank that does this transaction repeatedly over time? The results indicate that pricing and hedging errors due to imperfect models and inaccurate volatility forecasts create sizable risk exposure for option writers. We then consider to what extent the bank can limit the damage due to model risk by pricing options using a higher volatility than its best estimate from historical data.”

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Posted in Implied volatility

 

Forecasting Volatility

20 Dec 2011

Article by: Stephen Figlewski
Published by: New York University Stern School of Business
Date: 24 Apr 2004

“This monograph puts together results from several lines of research that I have pursued over a period of years, on the general topic of volatility forecasting for option pricing applications. It is not meant to be a complete survey of the extensive literature on the subject, nor is it a definitive set of prescriptions on how to get the best volatility forecast. While at the outset, I had hoped to find the Best Method to obtain a volatility input for use in pricing options, as the reader will quickly determine, it seems that I have been more successful in uncovering the flaws and difficulties in the methods that are widely used than I have been in determining a single optimal strategy myself.

“Since I am not revealing the optimal approach to volatility forecasting, the major value of this work, if any, is more to share with the reader a variety of observations and thoughts about volatility prediction, that I have arrived at after investigating the problem from a number of different angles. Two major themes emerge, both having to do with the connection, or perhaps more correctly, the possibility of a disconnection between theory and practice in dealing with volatility prediction and its role in option valuation. Two general classes of theories are involved.”

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Posted in Implied volatility, Realized volatility

 
 
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