Identifying causality is a challenging task in many data-intensive scenarios. Many algorithms have been proposed for this critical task. However, most of them consider the learning algorithms for directed acyclic graph (DAG) of Bayesian network (BN). These BN-based models only have limited causal explainability because of the issue of Markov equivalence class. Moreover, they are dependent on the assumption of stationarity, whereas many sampling time series from complex system are nonstationary. The nonstationary time series bring dataset shift problem, which leads to the unsatisfactory performances of these algorithms. To fill these gaps, a novel causation model named Unique Causal Network (UCN) is proposed in this paper. Different from the...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
Causal structure learning from observational data remains a non-trivial task due to various factors ...
In this thesis we study dynamical systems that consist of interconnected subsystems. We address the ...
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...
In this paper we propose a causal analog to the purely observational Dynamic Bayesian Networks, whic...
This study addresses the problem of learning a summary causal graph on time series with potentially ...
Reconstructing time-delayed interactions among nodes of nonlinear networked systems based on time-se...
In this paper we develop a novel framework for inferring a generative model of network structure rep...
University of Minnesota Ph.D. dissertation. May 2021. Major: Electrical/Computer Engineering. Adviso...
A challenging problem when studying a dynamical system is to find the interdependencies among its in...
Identifying causal relationships and quantifying their strength from observational time series data ...
We introduce De Bruijn Graph Neural Networks (DBGNNs), a novel time-aware graph neural network archi...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
Causal structure learning from observational data remains a non-trivial task due to various factors ...
In this thesis we study dynamical systems that consist of interconnected subsystems. We address the ...
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...
In this paper we propose a causal analog to the purely observational Dynamic Bayesian Networks, whic...
This study addresses the problem of learning a summary causal graph on time series with potentially ...
Reconstructing time-delayed interactions among nodes of nonlinear networked systems based on time-se...
In this paper we develop a novel framework for inferring a generative model of network structure rep...
University of Minnesota Ph.D. dissertation. May 2021. Major: Electrical/Computer Engineering. Adviso...
A challenging problem when studying a dynamical system is to find the interdependencies among its in...
Identifying causal relationships and quantifying their strength from observational time series data ...
We introduce De Bruijn Graph Neural Networks (DBGNNs), a novel time-aware graph neural network archi...
We investigate how efficiently a known underlying sparse causality structure of a simulated multivar...
Causal structure learning from observational data remains a non-trivial task due to various factors ...
In this thesis we study dynamical systems that consist of interconnected subsystems. We address the ...