We introduce an ambidextrous view of stochastic dynamical systems, comparing their forward-time and reverse-time representations and then integrating them into a single time-symmetric representation. The perspective is useful theoretically, computationally, and conceptually. Mathematically, we prove that the excess entropy—a familiar measure of organization in complex systems—is the mutual information not only between the past and future, but also between the predictive and retrodictive causal states. Practically, we exploit the connection between prediction and retrodiction to directly calculate the excess entropy. Conceptually, these lead one to discover new system measures for stochastic dynamical systems: crypticity (information accessi...
Isolating slower dynamics from fast fluctuations has proven remarkably powerful, but how do we proce...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Dynamical systems theory has been present at the forefront of research by scientists and mathematici...
We show how the shared information between the past and future---the excess entropy---deriv...
In the study of complex systems from observed multivariate time series, insight into the evolution o...
Renewal processes are broadly used to model stochastic behavior consisting of isolated even...
The hallmark of deterministic chaos is that it creates information - the rate being given by the Kol...
Renewal processes are broadly used to model stochastic behavior consisting of isolated events separa...
The hallmark of deterministic chaos is that it creates information---the rate being given b...
We study how the Shannon entropy of sequences produced by an information source converges to the sou...
Currently, 'time' does not play any essential role in quantum information theory. In this sense, qua...
Here we deconstruct, and then in a reasoned way reconstruct, the concept of “entropy of a system”, p...
Inferring the coupling structure of complex systems from time series data in general by means of sta...
We show in detail how to determine the time-reversed representation of a stationary hidden stochasti...
One of the most basic characterizations of the relationship between two random variables, X and Y, i...
Isolating slower dynamics from fast fluctuations has proven remarkably powerful, but how do we proce...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Dynamical systems theory has been present at the forefront of research by scientists and mathematici...
We show how the shared information between the past and future---the excess entropy---deriv...
In the study of complex systems from observed multivariate time series, insight into the evolution o...
Renewal processes are broadly used to model stochastic behavior consisting of isolated even...
The hallmark of deterministic chaos is that it creates information - the rate being given by the Kol...
Renewal processes are broadly used to model stochastic behavior consisting of isolated events separa...
The hallmark of deterministic chaos is that it creates information---the rate being given b...
We study how the Shannon entropy of sequences produced by an information source converges to the sou...
Currently, 'time' does not play any essential role in quantum information theory. In this sense, qua...
Here we deconstruct, and then in a reasoned way reconstruct, the concept of “entropy of a system”, p...
Inferring the coupling structure of complex systems from time series data in general by means of sta...
We show in detail how to determine the time-reversed representation of a stationary hidden stochasti...
One of the most basic characterizations of the relationship between two random variables, X and Y, i...
Isolating slower dynamics from fast fluctuations has proven remarkably powerful, but how do we proce...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Dynamical systems theory has been present at the forefront of research by scientists and mathematici...