The deficiencies of stationary models applied to financial time series are well documented. A special form of non-stationarity, where the underlying generator switches between (approximately) stationary regimes, seems particularly appropriate for financial markets. We use a dynamic switching (modelled by a hidden Markov model) combined with a linear dynamical system in a hybrid switching state space model (SSSM) and discuss the practical details of training such models with a variational EM algorithm due to [Ghahramani and Hilton,1998]. The performance of the SSSM is evaluated on several financial data sets and it is shown to improve on a number of existing benchmark methods
Hidden Markov Modelle (HMMs) und Hidden Semi-Markov Modelle (HSMMs) erlauben die Modellierung vers...
Markov switching models are one possible method to account for volatility clustering. This chapter a...
In the present paper we apply the Gibbs Sampling approach to estimate the parameters of a MarkovSwit...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
azzouzimQaston.ac.uk i.t.nabneyQaston.ac.uk The deficiencies of stationary models applied to financi...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
We introduce a new statistical model for time series that iteratively segments data into regimes wit...
RR-5862In this article we develop a new approach within the framework of asset pricing models that i...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
We propose an innovations form of the structural model underlying exponential smoothing that is furt...
Markov switching models are useful because of their ability to capture simple dynamics and important...
In this paper, we discuss the calibration of the geometric Brownian motion model equipped with Marko...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
This dissertation studies statistical properties and applications of the Markov switching models for...
Hidden Markov Modelle (HMMs) und Hidden Semi-Markov Modelle (HSMMs) erlauben die Modellierung vers...
Markov switching models are one possible method to account for volatility clustering. This chapter a...
In the present paper we apply the Gibbs Sampling approach to estimate the parameters of a MarkovSwit...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
azzouzimQaston.ac.uk i.t.nabneyQaston.ac.uk The deficiencies of stationary models applied to financi...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
We introduce a new statistical model for time series that iteratively segments data into regimes wit...
RR-5862In this article we develop a new approach within the framework of asset pricing models that i...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
We propose an innovations form of the structural model underlying exponential smoothing that is furt...
Markov switching models are useful because of their ability to capture simple dynamics and important...
In this paper, we discuss the calibration of the geometric Brownian motion model equipped with Marko...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
This dissertation studies statistical properties and applications of the Markov switching models for...
Hidden Markov Modelle (HMMs) und Hidden Semi-Markov Modelle (HSMMs) erlauben die Modellierung vers...
Markov switching models are one possible method to account for volatility clustering. This chapter a...
In the present paper we apply the Gibbs Sampling approach to estimate the parameters of a MarkovSwit...