Causal inference from observational data is one of the most fundamental problems in science. In general, the task is to tell whether it is more likely that X caused Y, or vice versa, given only data over their joint distribution. In this paper we propose a general inference framework based on Kolmogorov complexity, as well as a practical and computable instantiation based on the Minimum Description Length (MDL) principle. Simply put, we propose causal inference by compression. That is, we infer that X is a likely cause of Y if we can better compress the data by first encoding X, and then encoding Y given X, than in the other direction. To show this works in practice, we propose Origo, an efficient method for inferring the causal directio...
Information Geometric Causal Inference (IGCI) is a new approach to distin-guish between cause and ef...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
Given two discrete valued time series—that is, event sequences—of length n can we tell whether they ...
Given data over the joint distribution of two univariate or multivariate random variables $X$ and $Y...
We consider the fundamental problem of inferring the causal direction between two univariate numeric...
The algorithmic Markov condition states that the most likely causal direction between two random var...
Inferring the causal structure that links n observables is usually based upon detecting statistical ...
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 ...
The causal Markov condition (CMC) is a postulate that links observations to causality. It describes ...
AbstractWhile conventional approaches to causal inference are mainly based on conditional (in)depend...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
Over the past twenty-five years, a large number of algorithms have been developed to learn the struc...
We propose a method to quantify the complexity of conditional probability measures by a Hilbert spac...
While conventional approaches to causal inference are mainly based on conditional (in)dependences, r...
Information Geometric Causal Inference (IGCI) is a new approach to distin-guish between cause and ef...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
Given two discrete valued time series—that is, event sequences—of length n can we tell whether they ...
Given data over the joint distribution of two univariate or multivariate random variables $X$ and $Y...
We consider the fundamental problem of inferring the causal direction between two univariate numeric...
The algorithmic Markov condition states that the most likely causal direction between two random var...
Inferring the causal structure that links n observables is usually based upon detecting statistical ...
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 ...
The causal Markov condition (CMC) is a postulate that links observations to causality. It describes ...
AbstractWhile conventional approaches to causal inference are mainly based on conditional (in)depend...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
Over the past twenty-five years, a large number of algorithms have been developed to learn the struc...
We propose a method to quantify the complexity of conditional probability measures by a Hilbert spac...
While conventional approaches to causal inference are mainly based on conditional (in)dependences, r...
Information Geometric Causal Inference (IGCI) is a new approach to distin-guish between cause and ef...
We are interested in learning causal relationships between pairs of random variables, purely from ob...
Given two discrete valued time series—that is, event sequences—of length n can we tell whether they ...