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We Are Not Your Real Parents: Telling Causal from Confounded using MDL

Abstract

Given data over variables (X1,...,Xm,Y)(X_1,...,X_m, Y) we consider the problem of finding out whether XX jointly causes YY or whether they are all confounded by an unobserved latent variable ZZ. To do so, we take an information-theoretic approach based on Kolmogorov complexity. In a nutshell, we follow the postulate that first encoding the true cause, and then the effects given that cause, results in a shorter description than any other encoding of the observed variables. The ideal score is not computable, and hence we have to approximate it. We propose to do so using the Minimum Description Length (MDL) principle. We compare the MDL scores under the models where XX causes YY and where there exists a latent variables ZZ confounding both XX and YY and show our scores are consistent. To find potential confounders we propose using latent factor modeling, in particular, probabilistic PCA (PPCA). Empirical evaluation on both synthetic and real-world data shows that our method, CoCa, performs very well -- even when the true generating process of the data is far from the assumptions made by the models we use. Moreover, it is robust as its accuracy goes hand in hand with its confidence

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