Understanding the generative mechanism of a natural system is a vital component of the scientific method. Here, we investigate one of the fundamental steps toward this goal by presenting the minimal generator of an arbitrary binary Markov process. This is a class of processes whose predictive model is well known. Surprisingly, the generative model requires three distinct topologies for different regions of parameter space. We show that a previously proposed generator for a particular set of binary Markov processes is, in fact, not minimal. Our results shed the first quantitative light on the relative (minimal) costs of prediction and generation. We find, for instance, that the difference between prediction and generation is maximized when t...
We develop a theory of probabilistic continuous processes that is meant ultimately to be part of an ...
We recast the theory of labelled Markov processes in a new setting, in a way "dual" to the usual ...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Understanding the generative mechanism of a natural system is a vital component of the scientific me...
Given an observed stochastic process, computational mechanics provides an explicit and efficient met...
Abstract—Consider a stationary discrete random process with alphabet size d, which is assumed to be ...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
The ε-machine is a stochastic process's optimal model-maximally predictive and minimal in size. It o...
Even simply defined, finite-state generators produce stochastic processes that require tracking an u...
This paper addresses two fundamental problems in the context of hidden Markov models (HMMs). The fir...
Scientific explanation often requires inferring maximally predictive features from a given data set....
The j-state general Markov model of evolution ( due to Steel) is a stochastic model concerned with t...
It is common, when dealing with quantum processes involving a subsystem of amuch larger composite cl...
Even simply-defined, finite-state generators produce stochastic processes that require tracking an u...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
We develop a theory of probabilistic continuous processes that is meant ultimately to be part of an ...
We recast the theory of labelled Markov processes in a new setting, in a way "dual" to the usual ...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Understanding the generative mechanism of a natural system is a vital component of the scientific me...
Given an observed stochastic process, computational mechanics provides an explicit and efficient met...
Abstract—Consider a stationary discrete random process with alphabet size d, which is assumed to be ...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
The ε-machine is a stochastic process's optimal model-maximally predictive and minimal in size. It o...
Even simply defined, finite-state generators produce stochastic processes that require tracking an u...
This paper addresses two fundamental problems in the context of hidden Markov models (HMMs). The fir...
Scientific explanation often requires inferring maximally predictive features from a given data set....
The j-state general Markov model of evolution ( due to Steel) is a stochastic model concerned with t...
It is common, when dealing with quantum processes involving a subsystem of amuch larger composite cl...
Even simply-defined, finite-state generators produce stochastic processes that require tracking an u...
The Partition Markov Model characterizes the process by a partition L of the state space, wher...
We develop a theory of probabilistic continuous processes that is meant ultimately to be part of an ...
We recast the theory of labelled Markov processes in a new setting, in a way "dual" to the usual ...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...