A filtering approach to tracking volatility from prices observed at random times
Abstract
This paper is concerned with nonlinear filtering of the coefficients in asset price models with stochastic volatility. More specifically, we assume that the asset price process S=(St)t≥0 is given by dSt=m(θt)St dt+v(θt)St dBt, where B=(Bt)t≥0 is a Brownian motion, v is a positive function and θ=(θt)t≥0 is a cádlág strong Markov process. The random process θ is unobservable. We assume also that the asset price St is observed only at random times 0<τ1<τ2< ... . This is an appropriate assumption when modeling high frequency financial data (e.g., tick-by-tick stock prices). In the above setting the problem of estimation of θ can be approached as a special nonlinear filtering problem with measurements generated by a multivariate point process (τk, log Sτk). While quite natural, this problem does not fit into the "standard" diffusion or simple point process filtering frameworks and requires more technical tools. We derive a closed form optimal recursive Bayesian filter for θt, based on the observations of (τk, log Sτk)k≥1. It turns out that the filter is given by a recursive system that involves only deterministic Kolmogorov-type equations, which should make the numerical implementation relatively easy.
Additional Information
© 2006 The Institute of Mathematical Statistics. Received December 2003; revised February 2006. We are grateful to the anonymous Associate Editor and the referee for their constructive suggestions, especially regarding a simplified presentation of the results. We are very much indebted to Remigijus Mikulevicius for many important suggestions, and to Ilya Zaliapin, whose numerical experiments helped to discover an error in a preprint version of the paper. [J.C. was] [s]upported in part by the NSF Grants DMS-00-99549 and DMS-04-03575. [B.R. was] [s]upported in part by the Army Research Office and the Office of Naval Research under Grants DAAD19-02-1-0374 and N0014-03-0027.Attached Files
Published - CVIaap06.pdf
Accepted Version - 0612212.pdf
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Additional details
- Eprint ID
- 6977
- Resolver ID
- CaltechAUTHORS:CVIaap06
- NSF
- DMS-00-99549
- NSF
- DMS-04-03575
- Army Research Office (ARO)
- DAAD19-02-1-0374
- Office of Naval Research (ONR)
- N00014-03-0027
- Created
-
2007-01-04Created from EPrint's datestamp field
- Updated
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2021-11-08Created from EPrint's last_modified field