Title of article :
Mixture of Forward-Directed and Backward-Directed Autore- gressive Hidden Markov Models for Time Series Modeling
Author/Authors :
RezaeiTabar, Vahid Department of Statistics - Faculty of mathematics and Computer Sciences - Allameh Tabataba’i University, Tehran, Iran , Fathipour, Hosna Financial Mathematics Group - Faculty of Financial Sciences - Kharazmi University, Iran , Pérez-Sánchez, Horacio Structural Bioinformatics and High Performance Computing Research Group (BIO-HPC) Uni- versidad Católica de Murcia (UCAM), Spain , Eskandari, Farzad Department of Statistics - Faculty of mathematics and Computer Sciences - Allameh Tabataba’i University, Tehran, Iran , Plewczynski, Dariusz Faculty of Mathematics and Information Science - Warsaw University of Technology, Warsaw, Poland
Pages :
24
From page :
89
To page :
112
Abstract :
Hidden Markov models (HMM) are a ubiquitous tool for modeling time series data. The HMM can be poor at capturing dependency between observations because of the statistical assumptions it makes. Therefore, the extension of the HMM called forward-directed Autoregressive HMM (ARHMM) is considered to handle the dependencies between observations. It is also more appropriate to use an Autoregres- sive Hidden Markov Model directed backward in time. In this paper, we present a sequence-level mixture of these two forms of ARHMM (called MARHMM), eectively allowing the model to choose for itself whether a forward-directed or backward-directed model or a soft combination of the two models are most appropriate for a given data set. For this purpose, we use the conditional independence relations in the context of a Bayesian network which is a probabilistic graphical model. The performance of the MARHMM is discussed by applying it to the simulated and real data sets. We show that the proposed model has greater modeling power than the conventional forward-directed ARHMM.
Keywords :
MixtureARHMM , Bayesian network , Autoregressive hidden markov model
Serial Year :
2019
Record number :
2495657
Link To Document :
بازگشت