Title
Modeling Volatility Using State Space Models
Abstract
In time series problems, noise can be divided into two categories: dynamic noise which drives the process, and observational noise which is added in the measurement process, but does not influence future values of the system. In this framework, we show that empirical volatilities (the squared relative returns of prices) exhibit a significant amount of observational noise. To model and predict their time evolution adequately, we estimate state space models that explicitly include observational noise. We obtain relaxation times for shocks in the logarithm of volatility ranging from three weeks (for foreign exchange) to three to five months (for stock indices). In most cases, a two-dimensional hidden state is required to yield residuals that are consistent with white noise. We compare these results with ordinary autoregressive models (without a hidden state) and find that autoregressive models underestimate the relaxation times by about two orders of magnitude since they do not distinguish between observational and dynamic noise. This new interpretation of the dynamics of volatility in terms of relaxators in a state space model carries over to stochastic volatility models and to GARCH models, and is useful for several problems in finance, including risk management and the pricing of derivative securities.Data sets used. Olsen & Associates high frequency DEM/USD foreign exchange rates (8 years). Nikkei 225 index (40 years). Dow Jones Industrial Average (25 years).
Year
DOI
Venue
1997
10.1142/S0129065797000392
INTERNATIONAL JOURNAL OF NEURAL SYSTEMS
Keywords
Field
DocType
risk management,state space model,time series,white noise,relaxation time,autoregressive model,garch model,indexation,high frequency
Econometrics,Autoregressive model,Computer science,Stock market index,State-space representation,White noise,Logarithm,Autoregressive conditional heteroskedasticity,Volatility (finance),State space
Journal
Volume
Issue
ISSN
8
4
0129-0657
Citations 
PageRank 
References 
3
0.92
8
Authors
2
Name
Order
Citations
PageRank
J Timmer130.92
Andreas S. Weigend2576112.30