Causal Discovery in Linear Latent Variable Models Subject to Measurement Error

Neural Information Processing Systems 

We focus on causal discovery in the presence of measurement error in linear systems where the mixing matrix, i.e., the matrix indicating the independent exogenous noise terms pertaining to the observed variables, is identified up to permutation and scaling of the columns.