Consider the problem of approximating a Markov chain by another Markov chain with a smaller state space that is obtained by partitioning the original state space. An information-theoretic cost function is proposed that is based on the relative entropy rate between the original Markov chain and a Markov chain defined by the partition. The state space aggregation problem can be sub-optimally solved by using the information bottleneck method
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Motivated by Markov decision processes, this paper introduces a form of embedding for Markov chains ...
This work focuses on the computation of the steady state distribution of a Markov chain, making use ...
In this paper, we present a method for reducing a regular, discrete-time Markov chain (DTMC) to anot...
In this paper, we present a method for reducing a regular, discrete-time Markov chain (DTMC) to anot...
We present a sufficient condition for a non-injective function of a Markov chain to be a second-orde...
Abstract — This paper is concerned with an information-theoretic framework to aggregate a large-scal...
In this thesis, the theory of lumpability (strong lumpability and weak lumpability) of irreducible f...
Markov Chains (MCs) are used ubiquitously to model dynamical systems with uncertain dynamics. In man...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Markov chain serves as an important modeling framework in applied science and engineering. e.g., Mar...
Abstract — In this paper, we investigate the problem of aggregating a given finite-state Markov proc...
We explore formal approximation techniques for Markov chains based on state–space reduction t...
We investigate the complexity of computing entropy of various Markovian models including Markov Cha...
Solving Markov chains is, in general, difficult if the state space of the chain is very large (or in...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Motivated by Markov decision processes, this paper introduces a form of embedding for Markov chains ...
This work focuses on the computation of the steady state distribution of a Markov chain, making use ...
In this paper, we present a method for reducing a regular, discrete-time Markov chain (DTMC) to anot...
In this paper, we present a method for reducing a regular, discrete-time Markov chain (DTMC) to anot...
We present a sufficient condition for a non-injective function of a Markov chain to be a second-orde...
Abstract — This paper is concerned with an information-theoretic framework to aggregate a large-scal...
In this thesis, the theory of lumpability (strong lumpability and weak lumpability) of irreducible f...
Markov Chains (MCs) are used ubiquitously to model dynamical systems with uncertain dynamics. In man...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Markov chain serves as an important modeling framework in applied science and engineering. e.g., Mar...
Abstract — In this paper, we investigate the problem of aggregating a given finite-state Markov proc...
We explore formal approximation techniques for Markov chains based on state–space reduction t...
We investigate the complexity of computing entropy of various Markovian models including Markov Cha...
Solving Markov chains is, in general, difficult if the state space of the chain is very large (or in...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Motivated by Markov decision processes, this paper introduces a form of embedding for Markov chains ...
This work focuses on the computation of the steady state distribution of a Markov chain, making use ...