Even simply defined, finite-state generators produce stochastic processes that require tracking an uncountable infinity of probabilistic features for optimal prediction. For processes generated by hidden Markov chains, the consequences are dramatic. Their predictive models are generically infinite state. Until recently, one could determine neither their intrinsic randomness nor structural complexity. The prequel to this work introduced methods to accurately calculate the Shannon entropy rate (randomness) and to constructively determine their minimal (though, infinite) set of predictive features. Leveraging this, we address the complementary challenge of determining how structured hidden Markov processes are by calculating their statistical ...
Scientific explanation often requires inferring maximally predictive features from a given data set....
Scientific explanation often requires inferring maximally predictive features from a given data set....
We introduce a simple analysis of the structural complexity of infinite-memory processes built from ...
Even simply defined, finite-state generators produce stochastic processes that require tracking an u...
Even simply-defined, finite-state generators produce stochastic processes that require tracking an u...
The world around us is awash with structure and pattern. We observe it in thecycles of the seasons, ...
Hidden Markov chains are widely applied statistical models of stochastic processes, from fundamental...
Statistical complexity is a measure of complexity of discrete-time stationary stochastic processes, ...
Statistical complexity is a measure of complexity of discrete-time stationary stochastic processes, ...
The ε-machine is a stochastic process's optimal model-maximally predictive and minimal in size. It o...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process’ intrinsic randomne...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
The $\epsilon$-machine is a stochastic process' optimal model -- maximally predictive and minimal in...
We study how the Shannon entropy of sequences produced by an information source converges to the sou...
We introduce a Bayesian approach to discovering patterns in structurally complex processes. The prop...
Scientific explanation often requires inferring maximally predictive features from a given data set....
Scientific explanation often requires inferring maximally predictive features from a given data set....
We introduce a simple analysis of the structural complexity of infinite-memory processes built from ...
Even simply defined, finite-state generators produce stochastic processes that require tracking an u...
Even simply-defined, finite-state generators produce stochastic processes that require tracking an u...
The world around us is awash with structure and pattern. We observe it in thecycles of the seasons, ...
Hidden Markov chains are widely applied statistical models of stochastic processes, from fundamental...
Statistical complexity is a measure of complexity of discrete-time stationary stochastic processes, ...
Statistical complexity is a measure of complexity of discrete-time stationary stochastic processes, ...
The ε-machine is a stochastic process's optimal model-maximally predictive and minimal in size. It o...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process’ intrinsic randomne...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
The $\epsilon$-machine is a stochastic process' optimal model -- maximally predictive and minimal in...
We study how the Shannon entropy of sequences produced by an information source converges to the sou...
We introduce a Bayesian approach to discovering patterns in structurally complex processes. The prop...
Scientific explanation often requires inferring maximally predictive features from a given data set....
Scientific explanation often requires inferring maximally predictive features from a given data set....
We introduce a simple analysis of the structural complexity of infinite-memory processes built from ...