Liu Kaiwei, Yuan Bing, Zhang Jiang
School of Systems Science, Beijing Normal University, Beijing 100875, China.
Swarma Research, Beijing 102300, China.
Entropy (Basel). 2024 Jul 23;26(8):618. doi: 10.3390/e26080618.
After coarse-graining a complex system, the dynamics of its macro-state may exhibit more pronounced causal effects than those of its micro-state. This phenomenon, known as causal emergence, is quantified by the indicator of effective information. However, two challenges confront this theory: the absence of well-developed frameworks in continuous stochastic dynamical systems and the reliance on coarse-graining methodologies. In this study, we introduce an exact theoretic framework for causal emergence within linear stochastic iteration systems featuring continuous state spaces and Gaussian noise. Building upon this foundation, we derive an analytical expression for effective information across general dynamics and identify optimal linear coarse-graining strategies that maximize the degree of causal emergence when the dimension averaged uncertainty eliminated by coarse-graining has an upper bound. Our investigation reveals that the maximal causal emergence and the optimal coarse-graining methods are primarily determined by the principal eigenvalues and eigenvectors of the dynamic system's parameter matrix, with the latter not being unique. To validate our propositions, we apply our analytical models to three simplified physical systems, comparing the outcomes with numerical simulations, and consistently achieve congruent results.
对一个复杂系统进行粗粒化处理后,其宏观状态的动力学可能会比微观状态表现出更显著的因果效应。这种被称为因果涌现的现象,是通过有效信息指标来量化的。然而,该理论面临两个挑战:连续随机动力系统中缺乏完善的框架,以及对粗粒化方法的依赖。在本研究中,我们为具有连续状态空间和高斯噪声的线性随机迭代系统中的因果涌现引入了一个精确的理论框架。在此基础上,我们推导出了一般动力学中有效信息的解析表达式,并确定了最优线性粗粒化策略,当粗粒化消除的维度平均不确定性有上限时,这些策略能使因果涌现程度最大化。我们的研究表明,最大因果涌现和最优粗粒化方法主要由动态系统参数矩阵的主特征值和特征向量决定,后者并非唯一。为了验证我们的命题,我们将分析模型应用于三个简化的物理系统,将结果与数值模拟进行比较,并始终得到一致的结果。