Zhang Jiang, Liu Kaiwei
School of Systems Sciences, Beijing Normal University, Beijing 100875, China.
Swarma Research, Beijing 100085, China.
Entropy (Basel). 2022 Dec 23;25(1):26. doi: 10.3390/e25010026.
Conventional studies of causal emergence have revealed that stronger causality can be obtained on the macro-level than the micro-level of the same Markovian dynamical systems if an appropriate coarse-graining strategy has been conducted on the micro-states. However, identifying this emergent causality from data is still a difficult problem that has not been solved because the appropriate coarse-graining strategy can not be found easily. This paper proposes a general machine learning framework called Neural Information Squeezer to automatically extract the effective coarse-graining strategy and the macro-level dynamics, as well as identify causal emergence directly from time series data. By using invertible neural network, we can decompose any coarse-graining strategy into two separate procedures: information conversion and information discarding. In this way, we can not only exactly control the width of the information channel, but also can derive some important properties analytically. We also show how our framework can extract the coarse-graining functions and the dynamics on different levels, as well as identify causal emergence from the data on several exampled systems.
传统的因果涌现研究表明,如果对微观状态进行了适当的粗粒化策略,那么在相同马尔可夫动力学系统的宏观层面上可以获得比微观层面更强的因果关系。然而,从数据中识别这种涌现的因果关系仍然是一个尚未解决的难题,因为不容易找到合适的粗粒化策略。本文提出了一种名为神经信息挤压机的通用机器学习框架,以自动提取有效的粗粒化策略和宏观层面的动力学,并直接从时间序列数据中识别因果涌现。通过使用可逆神经网络,我们可以将任何粗粒化策略分解为两个单独的过程:信息转换和信息丢弃。通过这种方式,我们不仅可以精确控制信息通道的宽度,还可以通过分析得出一些重要属性。我们还展示了我们的框架如何提取不同层面的粗粒化函数和动力学,以及如何从几个示例系统的数据中识别因果涌现。