Login / Signup

Reconciling emergences: An information-theoretic approach to identify causal emergence in multivariate data.

Fernando E RosasPedro A M MedianoHenrik Jeldtoft JensenAnil K SethAdam B BarrettRobin L Carhart-HarrisDaniel Bor
Published in: PLoS computational biology (2020)
The broad concept of emergence is instrumental in various of the most challenging open scientific questions-yet, few quantitative theories of what constitutes emergent phenomena have been proposed. This article introduces a formal theory of causal emergence in multivariate systems, which studies the relationship between the dynamics of parts of a system and macroscopic features of interest. Our theory provides a quantitative definition of downward causation, and introduces a complementary modality of emergent behaviour-which we refer to as causal decoupling. Moreover, the theory allows practical criteria that can be efficiently calculated in large systems, making our framework applicable in a range of scenarios of practical interest. We illustrate our findings in a number of case studies, including Conway's Game of Life, Reynolds' flocking model, and neural activity as measured by electrocorticography.
Keyphrases
  • data analysis
  • high resolution
  • climate change
  • electronic health record
  • healthcare
  • machine learning
  • case control
  • deep learning