Inferring the potential consequences of an unobserved event is a fundamental scientific question. To this end, Pearl's celebrated do-calculus provides a set of inference rules to derive an interventional probability from an observational one. In this framework, the primitive causal relations are encoded as functional dependencies in a Structural Causal Model (SCM), which are generally mapped into a Directed Acyclic Graph (DAG) in the absence of cycles. In this paper, by contrast, we capture causality without reference to graphs or functional dependencies, but with information fields and Witsenhausen's intrinsic model. The three rules of do-calculus reduce to a unique sufficient condition for conditional independence, the topological separat...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
This paper develops a set of graphoid-like axioms for causal relevance, that is, statements of the f...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
Inferring the potential consequences of an unobserved event is a fundamental scientific question. To...
Inferring the potential consequences of an unobserved event is a fundamental scientific question. To...
Abstract — Probabilistic graphical models are a fundamental tool in statistics, machine learning, si...
Dependency knowledge of the form "x is independent of y once z is known" invariably obeys ...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
As the Chain Event Graph (CEG) has a topology which represents sets of conditional independence stat...
yz Causal discovery, for the most part, is concerned with learning causal models in the form of dire...
While conventional approaches to causal inference are mainly based on conditional (in)dependences, r...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
One of the basic tasks of causal discovery is to estimate the causal effect of some set of variables...
AbstractWhile conventional approaches to causal inference are mainly based on conditional (in)depend...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
This paper develops a set of graphoid-like axioms for causal relevance, that is, statements of the f...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
Inferring the potential consequences of an unobserved event is a fundamental scientific question. To...
Inferring the potential consequences of an unobserved event is a fundamental scientific question. To...
Abstract — Probabilistic graphical models are a fundamental tool in statistics, machine learning, si...
Dependency knowledge of the form "x is independent of y once z is known" invariably obeys ...
AbstractAs the Chain Event Graph (CEG) has a topology which represents sets of conditional independe...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
As the Chain Event Graph (CEG) has a topology which represents sets of conditional independence stat...
yz Causal discovery, for the most part, is concerned with learning causal models in the form of dire...
While conventional approaches to causal inference are mainly based on conditional (in)dependences, r...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
One of the basic tasks of causal discovery is to estimate the causal effect of some set of variables...
AbstractWhile conventional approaches to causal inference are mainly based on conditional (in)depend...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
This paper develops a set of graphoid-like axioms for causal relevance, that is, statements of the f...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...