International audienceAn important question in microbiology is whether treatment causes changes in gut flora, and whether it also affects metabolism. The reconstruction of causal relations purely from non-temporal observational data is challenging. We address the problem of causal inference in a bivariate case, where the joint distribution of two variables is observed. We consider, in particular, data on discrete domains. The state-of-the-art causal inference methods for continuous data suffer from high computational complexity. Some modern approaches are not suitable for categorical data, and others need to estimate and fix multiple hyper-parameters. In this contribution, we introduce a novel method of causal inference which is based on th...
This paper frames causal structure estimation as a machine learning task. The idea is to treat indic...
The inference of causal relationships using observational data from partially observed multivariate ...
We describe a method that infers whether statistical dependences between two observed variables X an...
International audienceAn important question in microbiology is whether treatment causes changes in g...
An important question in microbiology is whether treatment causes changes in gut flora, and whether ...
An important question in microbiology is whether treatment causes changes in gut flora, and whether ...
In a number of real life applications, scientists do not have access to temporal data, since budget ...
We address the problem of two-variable causal inference without intervention. This task is to infer ...
With the development of modern science and sensing technology, we are in an era of data explosion. ...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
Many scientific and decision-making tasks require learning complex relationships between a set of c...
The mainstream of research in genetics, epigenetics, and imaging data analysis focuses on statistica...
Most machine learning-based methods predict outcomes rather than understanding causality. Machine le...
Statistical dependencies between two variables X and Y indicate that either X causes Y , or Y causes...
The mainstream of research in genetics, epigenetics, and imaging data analysis focuses on statistica...
This paper frames causal structure estimation as a machine learning task. The idea is to treat indic...
The inference of causal relationships using observational data from partially observed multivariate ...
We describe a method that infers whether statistical dependences between two observed variables X an...
International audienceAn important question in microbiology is whether treatment causes changes in g...
An important question in microbiology is whether treatment causes changes in gut flora, and whether ...
An important question in microbiology is whether treatment causes changes in gut flora, and whether ...
In a number of real life applications, scientists do not have access to temporal data, since budget ...
We address the problem of two-variable causal inference without intervention. This task is to infer ...
With the development of modern science and sensing technology, we are in an era of data explosion. ...
The gold standard for discovering causal relations is by means of experimentation. Over the last dec...
Many scientific and decision-making tasks require learning complex relationships between a set of c...
The mainstream of research in genetics, epigenetics, and imaging data analysis focuses on statistica...
Most machine learning-based methods predict outcomes rather than understanding causality. Machine le...
Statistical dependencies between two variables X and Y indicate that either X causes Y , or Y causes...
The mainstream of research in genetics, epigenetics, and imaging data analysis focuses on statistica...
This paper frames causal structure estimation as a machine learning task. The idea is to treat indic...
The inference of causal relationships using observational data from partially observed multivariate ...
We describe a method that infers whether statistical dependences between two observed variables X an...