Methods to identify cause-effect relationships currently mostly assume the variables to be scalar random variables. However, in many fields the objects of interest are vectors or groups of scalar variables. We present a new constraint-based non-parametric approach for inferring the causal relationship between two vector-valued random variables from observational data. Our method employs sparsity estimates of directed and undirected graphs and is based on two new principles for groupwise causal reasoning that we justify theoretically in Pearl's graphical model-based causality framework. Our theoretical considerations are complemented by two new causal discovery algorithms for causal interactions between two random vectors which find the corr...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
This paper is concerned with the problem of making causal inferences from observational data, when t...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
Abstract. The machine learning community has recently devoted much attention to the problem of infer...
Estimating causal relations between two or more variables is an important topic in psychology. Estab...
Abstract: "The problem of inferring causal relations from statistical data in the absence of experim...
The discovery of causal relationships from empirical data is an important problem in machine learnin...
We propose a method that infers whether linear relations between two high-dimensional variables X an...
Discovering statistical representations and relations among random variables is a very important tas...
Causal inference methods based on conditional independence construct Markov equivalent graphs and ca...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
A graphical model is a graph that represents a set of conditional independence relations among the v...
We describe a method for inferring linear causal relations among multi-dimensional variables. The id...
We address the problem of two-variable causal inference without intervention. This task is to infer ...
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
This paper is concerned with the problem of making causal inferences from observational data, when t...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
Abstract. The machine learning community has recently devoted much attention to the problem of infer...
Estimating causal relations between two or more variables is an important topic in psychology. Estab...
Abstract: "The problem of inferring causal relations from statistical data in the absence of experim...
The discovery of causal relationships from empirical data is an important problem in machine learnin...
We propose a method that infers whether linear relations between two high-dimensional variables X an...
Discovering statistical representations and relations among random variables is a very important tas...
Causal inference methods based on conditional independence construct Markov equivalent graphs and ca...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
A graphical model is a graph that represents a set of conditional independence relations among the v...
We describe a method for inferring linear causal relations among multi-dimensional variables. The id...
We address the problem of two-variable causal inference without intervention. This task is to infer ...
A number of approaches to causal discovery assume that there are no hidden confounders and are desig...
We consider causally sufficient acyclic causal models in which the relationship among the variables ...
This paper is concerned with the problem of making causal inferences from observational data, when t...
We are interested in learning causal relationships between pairs of random variables, purely from ob...