The causal Markov condition (CMC) is a postulate that links observations to causality. It describes the conditional independences among the observations that are entailed by a causal hypothesis in terms of a directed acyclic graph. In the conventional setting, the observations are random variables and the independence is a statistical one, i.e., the information content of observations is measured in terms of Shannon entropy. We formulate a generalized CMC for any kind of observations on which independence is defined via an arbitrary submodular information measure. Recently, this has been discussed for observations in terms of binary strings where information is understood in the sense of Kolmogorov complexity. Our approach enables us to fin...
A directed acyclic graph (DAG) partially represents the conditional independence structure among obs...
The algorithmic independence of conditionals, which postu- lates that the causal mechanism is algori...
We propose a new algorithm for estimating the causal structure that underlies the observed dependenc...
The causal Markov condition (CMC) is a postulate that links observations to causality. It describes ...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
The algorithmic Markov condition states that the most likely causal direction between two random var...
Data in the form of strings are varied (DNA, text, quantify EEG) and cannot always be modeled. A uni...
It is well-known that correlation does not equal causation, but how can we infer causal relations fr...
We consider the problem of inferring the causal direction between two univariate numeric random vari...
We propose a new approach to infer the causal structure that has generated the observed statistical ...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
AbstractThis paper examines an objection to maximum entropy updating and argues that the problem ari...
Causal inference from observational data is one of the most fundamental problems in science. In gene...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
A directed acyclic graph (DAG) partially represents the conditional independence structure among obs...
The algorithmic independence of conditionals, which postu- lates that the causal mechanism is algori...
We propose a new algorithm for estimating the causal structure that underlies the observed dependenc...
The causal Markov condition (CMC) is a postulate that links observations to causality. It describes ...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
The algorithmic Markov condition states that the most likely causal direction between two random var...
Data in the form of strings are varied (DNA, text, quantify EEG) and cannot always be modeled. A uni...
It is well-known that correlation does not equal causation, but how can we infer causal relations fr...
We consider the problem of inferring the causal direction between two univariate numeric random vari...
We propose a new approach to infer the causal structure that has generated the observed statistical ...
Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure le...
We use a notion of causal independence based on intervention, which is a fundamental concept of the ...
AbstractThis paper examines an objection to maximum entropy updating and argues that the problem ari...
Causal inference from observational data is one of the most fundamental problems in science. In gene...
Over the last decades, the advancements in measurement, collection, and storage of data have provide...
A directed acyclic graph (DAG) partially represents the conditional independence structure among obs...
The algorithmic independence of conditionals, which postu- lates that the causal mechanism is algori...
We propose a new algorithm for estimating the causal structure that underlies the observed dependenc...