Telling Cause from Effect using MDL-based Local and Global Regression

26 Sep 2017Alexander MarxJilles Vreeken

We consider the fundamental problem of inferring the causal direction between two univariate numeric random variables $X$ and $Y$ from observational data. The two-variable case is especially difficult to solve since it is not possible to use standard conditional independence tests between the variables... (read more)

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