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协调涌现:一种用于在多元数据中识别因果涌现的信息论方法。

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

机构信息

Center for Psychedelic Research, Department of Brain Science, Imperial College London, London SW7 2DD, UK.

Data Science Institute, Imperial College London, London SW7 2AZ, UK.

出版信息

PLoS Comput Biol. 2020 Dec 21;16(12):e1008289. doi: 10.1371/journal.pcbi.1008289. eCollection 2020 Dec.

Abstract

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.

摘要

涌现的广义概念在许多最具挑战性的开放性科学问题中都具有重要意义——然而,很少有关于构成涌现现象的定量理论被提出。本文介绍了一种在多变量系统中研究系统各部分的动态与宏观感兴趣特征之间关系的因果涌现的形式理论。我们的理论为下向因果关系提供了一个定量的定义,并引入了一种涌现行为的互补模式——我们称之为因果去耦。此外,该理论还提供了可在大型系统中高效计算的实用标准,使我们的框架适用于一系列具有实际意义的场景。我们在一些案例研究中说明了我们的发现,包括康威的生命游戏、雷诺兹的群体模型以及脑电图测量的神经活动。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1d2e/7833221/0621eb90dbdc/pcbi.1008289.g001.jpg

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