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allgebrist / Causal-Deconvolution-of-Networks

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Causal Deconvolution of Networks by Algorithmic Generative Models

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Causal Deconvolution of Networks by Algorithmic Generative Models

This repository contains the R Shiny code of the online application causal deconvolution of networks by algorithmic generative models by the Algorithmic Dynamics Lab and the Algorithmic Nature Group. The application is live at this website.

If you use this tool please cite

H. Zenil, N.A. Kiani, A. A. Zea, J. Tegnér, Causal Deconvolution by Algorithmic Generative Models, Nature Machine Intelligence, vol 1(1), pp. 58-66, 2019. [article]

For a quick explanation of the project, please refer to this video release by Nature.

Maintainer: Allan A. Zea (allan.zea [at] ciens.ucv.ve)

License: GNU Affero General Public License v3.0

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