State-of-the-art approaches to causal discovery usually assume a fixed underlying causal model. However, it is often the case that causal models vary across domains or subjects, due to possibly omitted factors that affect the quantitative causal effects. As a typical example, causal connectivity in the brain network has been reported to vary across individuals, with significant differences across groups of people, such as autistics and typical controls. In this paper, we develop a unified framework for causal discovery and mechanism-based group identification. In particular, we propose a specific and shared causal model (SSCM), which takes into account the variabilities of causal relations across individuals/groups and leverages their commo...
Human discovery of cause and effect in perception streams requires reliable online inference in high...
Directed acyclic graphs (DAGs) and associated probability models are widely used to model neural con...
Causal structure discovery is a much-studied topic and a fundamental problem in Machine Learning. Ca...
Discovering statistical representations and relations among random variables is a very important tas...
Many methods have been proposed over the years for distinguishing causes from effects using observat...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
The postulate of independence of cause and mechanism (ICM) has recently led to several new causal di...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
Mechanist philosophers have examined several strategies scientists use for discovering causal mechan...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
Learning causal structure from observational data often assumes that we observe independent and iden...
Inferring a system’s underlying mechanisms is a primary goal in many areas of science. For instance,...
The causal relationships determining the behaviour of a system under study are inherently directiona...
Functional networks, i.e. networks representing the interactions between the elements of a complex s...
Human discovery of cause and effect in perception streams requires reliable online inference in high...
Directed acyclic graphs (DAGs) and associated probability models are widely used to model neural con...
Causal structure discovery is a much-studied topic and a fundamental problem in Machine Learning. Ca...
Discovering statistical representations and relations among random variables is a very important tas...
Many methods have been proposed over the years for distinguishing causes from effects using observat...
Statistical network models based on Pairwise Markov Random Fields (PMRFs) are popular tools for anal...
The postulate of independence of cause and mechanism (ICM) has recently led to several new causal di...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
Mechanist philosophers have examined several strategies scientists use for discovering causal mechan...
Causality is a complex concept, which roots its developments across several fields, such as statisti...
Learning causal structure from observational data often assumes that we observe independent and iden...
Inferring a system’s underlying mechanisms is a primary goal in many areas of science. For instance,...
The causal relationships determining the behaviour of a system under study are inherently directiona...
Functional networks, i.e. networks representing the interactions between the elements of a complex s...
Human discovery of cause and effect in perception streams requires reliable online inference in high...
Directed acyclic graphs (DAGs) and associated probability models are widely used to model neural con...
Causal structure discovery is a much-studied topic and a fundamental problem in Machine Learning. Ca...