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Detecting confounding in multivariate linear models via spectral analysis (1704.01430v1)

Published 5 Apr 2017 in stat.ML

Abstract: We study a model where one target variable Y is correlated with a vector X:=(X_1,...,X_d) of predictor variables being potential causes of Y. We describe a method that infers to what extent the statistical dependences between X and Y are due to the influence of X on Y and to what extent due to a hidden common cause (confounder) of X and Y. The method relies on concentration of measure results for large dimensions d and an independence assumption stating that, in the absence of confounding, the vector of regression coefficients describing the influence of each X on Y typically has `generic orientation' relative to the eigenspaces of the covariance matrix of X. For the special case of a scalar confounder we show that confounding typically spoils this generic orientation in a characteristic way that can be used to quantitatively estimate the amount of confounding.

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Authors (2)
  1. Dominik Janzing (70 papers)
  2. Bernhard Schoelkopf (32 papers)
Citations (39)

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