Publications des scientifiques de l'IRD

Sokolovska N., Clement K., Zucker Jean-Daniel. (2019). Revealing causality between heterogeneous data sources with deep restricted Boltzmann machines. Information Fusion, 50, p. 139-147. ISSN 1566-2535.

Titre du document
Revealing causality between heterogeneous data sources with deep restricted Boltzmann machines
Année de publication
2019
Type de document
Article référencé dans le Web of Science WOS:000466056900011
Auteurs
Sokolovska N., Clement K., Zucker Jean-Daniel
Source
Information Fusion, 2019, 50, p. 139-147 ISSN 1566-2535
In a number of real life applications, scientists do not have access to temporal data, since budget for data acquisition is always limited. Here we challenge the problem of causal inference between groups of heterogeneous non-temporal observations obtained from multiple sources. We consider a family of probabilistic algorithms for causal inference based on an assumption that in case where X causes Y, P(X) and P(Y vertical bar X) are statistically independent. For a number of real world applications, deep learning methods were reported to achieve the most accurate empirical performance, what motivates us to use deep Boltzmann machines to approximate the marginal and conditional probabilities of heterogeneous observations as accurate as possible. We introduce a novel algorithm to infer causal relationships between blocks of variables. The proposed method was tested on a benchmark of multivariate cause-effect pairs. We show by our experiments that our method achieves the state-of-the-art empirical accuracy, and sometimes outperforms the state-of-the-art methods. An important part of our contribution is an application of the proposed algorithm to an original medical data set, where we explore relations between alimentary patters, human gut microbiome composition, and health status.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020]
Localisation
Fonds IRD [F B010075728]
Identifiant IRD
fdi:010075728
Contact