The broad abundance of time series data, which is in sharp contrast to limited knowledge of the underlying network dynamic processes that produce such observations, calls for a rigorous and efficient method of causal network inference. Here we develop mathematical theory of causation entropy, an information-theoretic statistic designed for model-free causality inference. For stationary Markov processes, we prove that for a given node in the network, its causal parents forms the minimal set of nodes that maximizes causation entropy, a result we refer to as the optimal causation entropy principle. Furthermore, this principle guides us to develop computational and data efficient algorithms for causal network inference based on a two-step disco...
Inferring the coupling structure of complex systems from time series data in general by means of sta...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
The broad abundance of time series data, which is in sharp contrast to limited knowledge of the unde...
Abstract. The broad abundance of time series data, which is in sharp contrast to limited knowledge o...
Natural systems compute intrinsically and produce information. The organization of a stochastic dyna...
In this paper we develop a novel framework for inferring a generative model of network structure rep...
We consider the problem of identifying the causal direction between two discrete random variables us...
We propose different approaches to infer causal influences between agents in a network using only ob...
The need to measure causal influences between random variables or processes in complex networks aris...
We propose a new inference rule for estimating causal structure that underlies the observed statisti...
It is a task of widespread interest to learn the underlying causal structure for systems of random v...
Revealing the interactions between the individual components in complex networks utilizing limited o...
Identifying causality is a challenging task in many data-intensive scenarios. Many algorithms have b...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Inferring the coupling structure of complex systems from time series data in general by means of sta...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
The broad abundance of time series data, which is in sharp contrast to limited knowledge of the unde...
Abstract. The broad abundance of time series data, which is in sharp contrast to limited knowledge o...
Natural systems compute intrinsically and produce information. The organization of a stochastic dyna...
In this paper we develop a novel framework for inferring a generative model of network structure rep...
We consider the problem of identifying the causal direction between two discrete random variables us...
We propose different approaches to infer causal influences between agents in a network using only ob...
The need to measure causal influences between random variables or processes in complex networks aris...
We propose a new inference rule for estimating causal structure that underlies the observed statisti...
It is a task of widespread interest to learn the underlying causal structure for systems of random v...
Revealing the interactions between the individual components in complex networks utilizing limited o...
Identifying causality is a challenging task in many data-intensive scenarios. Many algorithms have b...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Inferring the coupling structure of complex systems from time series data in general by means of sta...
Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...