Observable operator models (OOMs), a recently developed matrix model class of stochastic processes [6], possesses several advantages over hidden Markov models (HMMs). Nevertheless, there is a critical issue, the negative probability problem (NPP), which remains unsolved in OOMs theory; and which has heavily prevented it from being an alternative to HMMs in practice. To avoid the NPP we introduce in this report a variation of OOM, the norm observable operator models (norm-OOMs). Like OOMs, norm-OOMs describe stochastic processes also using linear ob-servable operators. But norm-OOMs differ from OOMs in that they employ a nonlinear function acting on the state vectors, instead of the linear one used by OOMs, to compute probabilities. Under th...
We study normal approximations for a class of discrete-time occupancy processes, namely, Markov chai...
Partially Observable Markov Decision Processes (POMDPs) provide a rich representation for agents act...
This report describes how the finite-dimensional marginal distributions of a stochastic process with...
Hidden Markov models (HMMs) are one of the most popular and success-ful statistical models for time ...
This tutorial gives a basic yet rigorous introduction to observable operator models (OOMs). OOMs are...
Observable operator models (OOMs) are a generalization of hidden Markov models (HMMs). They support ...
The article describes a new formal approach to model discrete stochastic processes, called observabl...
Hidden Markov Models (HMMs) today are the method of choice for blackbox modelling of symbolic, stoch...
Abstract: This article introduces observable operator models (OOM) and conditioned continuation repr...
Observable operator models (OOMs) are matrix models for describing stochastic processes. In this rep...
1This tutorial is updated at irregular intervals. For version control, use date underneath title. Th...
Observable operator models (OOMs) generalize hidden Markov models (HMMs) and can be represented in a...
We study a class of dynamical systems modelled as Markov chains that admit an invariant distribution...
Non-negative operators, in special case non-negative matrices, are an interesting topics for many sc...
This extended abstract discusses various approaches to the constraining of Partially Observable Mark...
We study normal approximations for a class of discrete-time occupancy processes, namely, Markov chai...
Partially Observable Markov Decision Processes (POMDPs) provide a rich representation for agents act...
This report describes how the finite-dimensional marginal distributions of a stochastic process with...
Hidden Markov models (HMMs) are one of the most popular and success-ful statistical models for time ...
This tutorial gives a basic yet rigorous introduction to observable operator models (OOMs). OOMs are...
Observable operator models (OOMs) are a generalization of hidden Markov models (HMMs). They support ...
The article describes a new formal approach to model discrete stochastic processes, called observabl...
Hidden Markov Models (HMMs) today are the method of choice for blackbox modelling of symbolic, stoch...
Abstract: This article introduces observable operator models (OOM) and conditioned continuation repr...
Observable operator models (OOMs) are matrix models for describing stochastic processes. In this rep...
1This tutorial is updated at irregular intervals. For version control, use date underneath title. Th...
Observable operator models (OOMs) generalize hidden Markov models (HMMs) and can be represented in a...
We study a class of dynamical systems modelled as Markov chains that admit an invariant distribution...
Non-negative operators, in special case non-negative matrices, are an interesting topics for many sc...
This extended abstract discusses various approaches to the constraining of Partially Observable Mark...
We study normal approximations for a class of discrete-time occupancy processes, namely, Markov chai...
Partially Observable Markov Decision Processes (POMDPs) provide a rich representation for agents act...
This report describes how the finite-dimensional marginal distributions of a stochastic process with...