Over the past two decades, several consistent procedures have been designed to infer causal conclusions from observational data. We prove that if the true causal network might be an arbitrary, linear Gaussian network or a discrete Bayes network, then every unambiguous causal conclusion produced by a consistent method from non-experimental data is subject to reversal as the sample size increases any finite number of times. That result, called the causal flipping theorem, extends prior results to the effect that causal discovery cannot be reliable on a given sample size. We argue that since repeated flipping of causal conclusions is unavoidable in principle for consistent methods, the best possible discovery methods are consistent methods tha...
Using a variety of different results from the literature, we show how causal discovery with experime...
Causal inference can estimate causal effects, but unless data are collected experimentally, statisti...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
A main message from the causal modelling literature in the last several decades is that under some p...
A main message from the causal modelling literature in the last several decades is that under some p...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
Inferring the causal structure that links n observables is usually based upon detecting statistical ...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
We study one of the simplest causal prediction algorithms that uses only conditional independences e...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
When performing causal discovery, assumptions have to be made on how the true causal mechanism corre...
One of the core assumptions in causal discovery is the faithfulness assumption, i.e., assuming that ...
Two key ideas of scientific explanation - explanations as causal information and explanation as unif...
yz Causal discovery, for the most part, is concerned with learning causal models in the form of dire...
Using a variety of different results from the literature, we show how causal discovery with experime...
Causal inference can estimate causal effects, but unless data are collected experimentally, statisti...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
A main message from the causal modelling literature in the last several decades is that under some p...
A main message from the causal modelling literature in the last several decades is that under some p...
Inferring the causal structure that links $n$ observables is usually based upon detecting statistic...
Inferring the causal structure that links n observables is usually based upon detecting statistical ...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
In the causal inference framework of Spirtes, Glymour, and Scheines (SGS), inferences about causal r...
We study one of the simplest causal prediction algorithms that uses only conditional independences e...
Many algorithms proposed in the machine learning community for inferring causality from data are gro...
When performing causal discovery, assumptions have to be made on how the true causal mechanism corre...
One of the core assumptions in causal discovery is the faithfulness assumption, i.e., assuming that ...
Two key ideas of scientific explanation - explanations as causal information and explanation as unif...
yz Causal discovery, for the most part, is concerned with learning causal models in the form of dire...
Using a variety of different results from the literature, we show how causal discovery with experime...
Causal inference can estimate causal effects, but unless data are collected experimentally, statisti...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...