An Algorithmic Information Calculus for Causal Discovery and Reprogramming Systems
Hector Zenil, Narsis A. Kiani, Francesco Marabita, Yue Deng, Szabolcs, Elias, Angelika Schmidt, Gordon Ball, Jesper Tegn\'er

TL;DR
This paper introduces an algorithmic information calculus that links a system's information content to its dynamics, enabling control and reprogramming of complex systems through interventions, validated on biological and artificial networks.
Contribution
It presents a novel framework combining algorithmic information theory with causal discovery and reprogramming, applicable to both artificial and biological systems.
Findings
Validated on biological networks like E.coli and human cells
Successfully reconstructed phase space and generating rules of cellular automata
Developed universal, parameter-free algorithms for causation and model inference
Abstract
We demonstrate that the algorithmic information content of a system is deeply connected to its potential dynamics, thus affording an avenue for moving systems in the information-theoretic space and controlling them in the phase space. To this end we performed experiments and validated the results on (1) a very large set of small graphs, (2) a number of larger networks with different topologies, and (3) biological networks from a widely studied and validated genetic network (e.coli) as well as on a significant number of differentiating (Th17) and differentiated human cells from high quality databases (Harvard's CellNet) with results conforming to experimentally validated biological data. Based on these results we introduce a conceptual framework, a model-based interventional calculus and a reprogrammability measure with which to steer, manipulate, and reconstruct the dynamics of non-…
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