In this paper we consider a class of conditionally Gaussian state-space models and discuss how they can provide a flexible and fairly simple tool for modelling financial time series, even in the presence of different components in the series, or of stochastic volatility. Estimation can be computed by recursive equations, which provide the optimal solution under rather mild assumptions. In more general models, the filter equations can still provide approximate solutions. We also discuss how some models traditionally employed for analyzing financial time series can be regarded in the state-space framework. Finally, we illustrate the models in two examples to real data sets.

Generalized dynamic linear models for financial time series

Campagnoli P.;Muliere P.;Petrone S.
2001

Abstract

In this paper we consider a class of conditionally Gaussian state-space models and discuss how they can provide a flexible and fairly simple tool for modelling financial time series, even in the presence of different components in the series, or of stochastic volatility. Estimation can be computed by recursive equations, which provide the optimal solution under rather mild assumptions. In more general models, the filter equations can still provide approximate solutions. We also discuss how some models traditionally employed for analyzing financial time series can be regarded in the state-space framework. Finally, we illustrate the models in two examples to real data sets.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11565/193205
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