In this paper, we introduce Max Markov Chain (MMC), a novel representation for a useful subset of High-order Markov Chains (HMCs) with sparse correlations among the states. MMC is parsimony while retaining the expressiveness of HMCs. Even though parameter optimization is generally intractable as with HMC approximate models, it has an analytical solution, better sample efficiency, and the desired spatial and computational advantages over HMCs and approximate HMCs. Simultaneously, efficient approximate solutions exist for this type of chains as we show empirically, which allow MMCs to scale to large domains where HMCs and approximate HMCs would struggle to perform. We compare MMC with HMC, first-order Markov chain, and an approximate HMC mode...
Time-homogeneous Markov chains are often used as disease progression models in studies of cost-effec...
For Hidden Markov Models (HMMs) with fully connected transition models, the three fundamental proble...
Scientific explanation often requires inferring maximally predictive features from a given data set....
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Markov models are widely used to describe stochastic dynamics. Here, we show that Markov models foll...
If the state space of a homogeneous continuous-time Markov chain is too large, making inferences bec...
We explore formal approximation techniques for Markov chains based on state–space reduction t...
This paper presents an algorithm for finding approximately optimal policies in very large Markov dec...
International audienceMarkov chain modeling often suffers from the curse of dimensionality problems ...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Markov Chains (MCs) are used ubiquitously to model dynamical systems with uncertain dynamics. In man...
In this thesis, the properties of some non-standard Markov chain models and their corresponding para...
Time-homogeneous Markov chains are often used as disease progression models in studies of cost-effec...
For Hidden Markov Models (HMMs) with fully connected transition models, the three fundamental proble...
Scientific explanation often requires inferring maximally predictive features from a given data set....
Markov decision processes continue to gain in popularity for modeling a wide range of applications r...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Markov models are widely used to describe stochastic dynamics. Here, we show that Markov models foll...
If the state space of a homogeneous continuous-time Markov chain is too large, making inferences bec...
We explore formal approximation techniques for Markov chains based on state–space reduction t...
This paper presents an algorithm for finding approximately optimal policies in very large Markov dec...
International audienceMarkov chain modeling often suffers from the curse of dimensionality problems ...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Markov Chains (MCs) are used ubiquitously to model dynamical systems with uncertain dynamics. In man...
In this thesis, the properties of some non-standard Markov chain models and their corresponding para...
Time-homogeneous Markov chains are often used as disease progression models in studies of cost-effec...
For Hidden Markov Models (HMMs) with fully connected transition models, the three fundamental proble...
Scientific explanation often requires inferring maximally predictive features from a given data set....