论文标题
神经信息挤压因果出现
Neural Information Squeezer for Causal Emergence
论文作者
论文摘要
关于因果出现的经典研究表明,在一些马尔可夫动力学系统中,如果我们以适当的方式粗糙晶粒,则在更高级别的描述上可以找到更高的因果关系。但是,从数据中确定这种新兴因果关系仍然是一个难题,因为无法轻易找到正确的粗粒策略。本文提出了一个称为神经信息挤压器的通用机器学习框架,以自动提取有效的粗粒策略和宏观状态动力学,并直接从时间序列数据中识别出因果出现。通过将粗粒的操作分解为两个过程:信息转换和信息掉落,我们不仅可以精确地控制信息通道的宽度,而且可以分析得出一些重要的属性,包括宏观动力学有效信息的确切表达。我们还展示了我们的框架如何在不同级别上提取动力学并从几个检查系统上的数据中确定因果出现。
The classic studies of causal emergence have revealed that in some Markovian dynamical systems, far stronger causal connections can be found on the higher-level descriptions than the lower-level of the same systems if we coarse-grain the system states in an appropriate way. However, identifying this emergent causality from the data is still a hard problem that has not been solved because the correct 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-state dynamics, as well as identify causal emergence directly from the time series data. By decomposing a coarse-graining operation into two processes: information conversion and information dropping out, we can not only exactly control the width of the information channel, but also can derive some important properties analytically including the exact expression of the effective information of a macro-dynamics. We also show how our framework can extract the dynamics on different levels and identify causal emergence from the data on several exampled systems.