A Financial Metric for Comparing Volatility Models: Do Better Models Make Money?
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Overview
Overview
abstract
This paper proposes a fully-specified equilibrium approach which provides
both financial and utility metrics for comparing alternative beliefs about
the conditional distribution of a stock price. In this paper we focus on
differences in volatility dynamics which are inputs to investors'
assessments of a derivative security. We construct equilibria in which
different investors (models) trade a derivative that is sensitive to the
volatility of the underlying asset. Our approach can be used to assess the
economic importance of parameter uncertainty and model misspecification.
Examples using simulated data demonstrate that informed investors
(investors with better models) make money and utility gains against
uninformed investors. Parameter uncertainty and model uncertainty in
general both lead to lower profits. Using historical data we find that
GARCH models make significant gains against constant and exponentially
weighted moving average specifications of volatility.