Multi-View Causal Discovery without Non-Gaussianity: Identifiability and Algorithms
AuthorsAmbroise Heurtebise†, Omar Chehab‡, Pierre Ablin, Alexandre Gramfort†, Aapo Hyvärinen§
Multi-View Causal Discovery without Non-Gaussianity: Identifiability and Algorithms
AuthorsAmbroise Heurtebise†, Omar Chehab‡, Pierre Ablin, Alexandre Gramfort†, Aapo Hyvärinen§
Causal discovery is a difficult problem that typically relies on strong assumptions on the data-generating model, such as non-Gaussianity. In practice, many modern applications provide multiple related views of the same system, which has rarely been considered for causal discovery. Here, we leverage this multi-view structure to achieve causal discovery with weak assumptions. We propose a multi-view linear Structural Equation Model (SEM) that extends the well-known framework of non-Gaussian disturbances by alternatively leveraging correlation over views. We prove the identifiability of the model for acyclic SEMs. Subsequently, we propose several multi-view causal discovery algorithms, inspired by single-view algorithms (DirectLiNGAM, PairwiseLiNGAM, and ICA-LiNGAM). The new methods are validated through simulations and applications on neuroimaging data, where they enable the estimation of causal graphs between brain regions.
Identifiable Multi-View Causal Discovery Without Non-Gaussianity
September 23, 2025research area Methods and Algorithms
We propose a novel approach to linear causal discovery in the framework of multi-view Structural Equation Models (SEM). Our proposed model relaxes the well-known assumption of non-Gaussian disturbances by alternatively assuming diversity of variances over views, making it more broadly applicable. We prove the identifiability of all the parameters of the model without any further assumptions on the structure of the SEM other than it being acyclic…
High Fidelity 3D Reconstructions with Limited Physical Views
November 29, 2021research area Computer Visionconference 3DV
Multi-view triangulation is the gold standard for 3D reconstruction from 2D correspondences, given known calibration and sufficient views. However in practice expensive multi-view setups — involving tens sometimes hundreds of cameras — are required to obtain the high fidelity 3D reconstructions necessary for modern applications. In this work we present a novel approach that leverages recent advances in 2D-3D lifting using neural shape priors…