Department of Physics and Astronomy, Brigham Young University, Provo, Utah 84602, USA.
Department of Biomedical Engineering, Georgia Tech and Emory University, Atlanta, Georgia 30332, USA.
Phys Rev Lett. 2014 Aug 29;113(9):098701. doi: 10.1103/PhysRevLett.113.098701.
Understanding the collective behavior of complex systems from their basic components is a difficult yet fundamental problem in science. Existing model reduction techniques are either applicable under limited circumstances or produce "black boxes" disconnected from the microscopic physics. We propose a new approach by translating the model reduction problem for an arbitrary statistical model into a geometric problem of constructing a low-dimensional, submanifold approximation to a high-dimensional manifold. When models are overly complex, we use the observation that the model manifold is bounded with a hierarchy of widths and propose using the boundaries as submanifold approximations. We refer to this approach as the manifold boundary approximation method. We apply this method to several models, including a sum of exponentials, a dynamical systems model of protein signaling, and a generalized Ising model. By focusing on parameters rather than physical degrees of freedom, the approach unifies many other model reduction techniques, such as singular limits, equilibrium approximations, and the renormalization group, while expanding the domain of tractable models. The method produces a series of approximations that decrease the complexity of the model and reveal how microscopic parameters are systematically "compressed" into a few macroscopic degrees of freedom, effectively building a bridge between the microscopic and the macroscopic descriptions.
从基本组成部分理解复杂系统的集体行为是科学中一个困难但基础的问题。现有的模型约简技术要么在有限的情况下适用,要么产生与微观物理脱节的“黑箱”。我们提出了一种新方法,即将任意统计模型的模型约简问题转化为构建高维流形的低维子流形逼近的几何问题。当模型过于复杂时,我们利用模型流形是有界的且具有层次结构的宽度的这一观察结果,并提出使用边界作为子流形逼近。我们将这种方法称为流形边界逼近方法。我们将这种方法应用于多个模型,包括指数和、蛋白质信号动力学系统模型和广义伊辛模型。通过关注参数而不是物理自由度,该方法统一了许多其他模型约简技术,例如奇异极限、平衡逼近和重整化群,同时扩大了可处理模型的范围。该方法产生了一系列的近似,降低了模型的复杂性,并揭示了微观参数是如何系统地“压缩”成少数宏观自由度的,有效地在微观和宏观描述之间建立了一座桥梁。