In the analysis and prediction of many real-world time series, the assumption of stationarity is not valid. A special form of non-stationarity, where the underlying generator switches between (approximately) stationary regimes, seems particularly appropriate for financial markets. We introduce a new model which combines a dynamic switching (controlled by a hidden Markov model) and a non-linear dynamical system. We show how to train this hybrid model in a maximum likelihood approach and evaluate its performance on both synthetic and financial data
In this article we propose a generalization of the linear factor model, that combines hidden Markov ...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
When linear models fail to explain the dynamic behavior of economic and financial time series, the r...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
azzouzimQaston.ac.uk i.t.nabneyQaston.ac.uk The deficiencies of stationary models applied to financi...
This paper investigates Hidden Markov Models (HMMs) in which the observations are generated from an ...
We introduce a new statistical model for time series that iteratively segments data into regimes wit...
Amongst all the objectives in the study of time series, uncovering the dynamic law of its generation...
In this article we develop a new approach within the framework of asset pricing models that incorpor...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
A modularised connectionist model, based on the Mixture of Experts (ME) algorithm for time series pr...
The main goal of this document is to find a good model for time series which are subject to changes ...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
In this article we propose a generalization of the linear factor model, that combines hidden Markov ...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
When linear models fail to explain the dynamic behavior of economic and financial time series, the r...
In the analysis and prediction of many real-world time series, the assumption of stationarity is not...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
azzouzimQaston.ac.uk i.t.nabneyQaston.ac.uk The deficiencies of stationary models applied to financi...
This paper investigates Hidden Markov Models (HMMs) in which the observations are generated from an ...
We introduce a new statistical model for time series that iteratively segments data into regimes wit...
Amongst all the objectives in the study of time series, uncovering the dynamic law of its generation...
In this article we develop a new approach within the framework of asset pricing models that incorpor...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
A modularised connectionist model, based on the Mixture of Experts (ME) algorithm for time series pr...
The main goal of this document is to find a good model for time series which are subject to changes ...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
In this article we propose a generalization of the linear factor model, that combines hidden Markov ...
In Chapter 2, we consider a limited-memory multiple shooting method for weakly constrained variation...
When linear models fail to explain the dynamic behavior of economic and financial time series, the r...