The Partition Markov Model characterizes the process by a partition L of the state space, where the elements in each part of L share the same transition probability to an arbitrary element in the alphabet. This model aims to answer the following questions: what is the minimal number of parameters needed to specify a Markov chain and how to estimate these parameters. In order to answer these questions, we build a consistent strategy for model selection which consist of: giving a size n realization of the process, finding a model within the Partition Markov class, with a minimal number of parts to represent the process law. From the strategy, we derive a measure that establishes a metric in the state space. In addition, we show th...
Summary: We present a general purpose implementation of variable length Markov models. Contrary to f...
We consider the model selection problem in the class of stationary variable length Markov chains (VL...
This paper introduced a general class of mathematical models, Markov chain models, which are appropr...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
In this work we address the problem of how to use time series data to choose from a finite set of ca...
In this paper we address the problem of modelling multivariate finite order Markov chains, when the ...
Given a Markov process with state space {0, 1} we treat parameter estimation of the transition inten...
We describe an extension of the hidden Markov model in which the manifest process conditionally foll...
In this work we discuss approximative techniques for the analysis of Markov chains, namely, state sp...
Abstract. The goal of this work is to formally abstract a Markov pro-cess evolving over a general st...
AbstractGiven a Markov process with state space {0, 1} we treat parameter estimation of the transiti...
The goal of this work is to formally abstract a Markov process evolving in discrete time over a gene...
We propose a novel approach to learn the structure of partially observable Markov models (POMMs) and...
Abstract. The goal of this work is to formally abstract a Markov pro-cess evolving over a general st...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
Summary: We present a general purpose implementation of variable length Markov models. Contrary to f...
We consider the model selection problem in the class of stationary variable length Markov chains (VL...
This paper introduced a general class of mathematical models, Markov chain models, which are appropr...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
In this work we address the problem of how to use time series data to choose from a finite set of ca...
In this paper we address the problem of modelling multivariate finite order Markov chains, when the ...
Given a Markov process with state space {0, 1} we treat parameter estimation of the transition inten...
We describe an extension of the hidden Markov model in which the manifest process conditionally foll...
In this work we discuss approximative techniques for the analysis of Markov chains, namely, state sp...
Abstract. The goal of this work is to formally abstract a Markov pro-cess evolving over a general st...
AbstractGiven a Markov process with state space {0, 1} we treat parameter estimation of the transiti...
The goal of this work is to formally abstract a Markov process evolving in discrete time over a gene...
We propose a novel approach to learn the structure of partially observable Markov models (POMMs) and...
Abstract. The goal of this work is to formally abstract a Markov pro-cess evolving over a general st...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
Summary: We present a general purpose implementation of variable length Markov models. Contrary to f...
We consider the model selection problem in the class of stationary variable length Markov chains (VL...
This paper introduced a general class of mathematical models, Markov chain models, which are appropr...