Stern Menachem, Liu Andrea J, Balasubramanian Vijay
Department of Physics and Astronomy, University of Pennsylvania, Philadelphia, Pennsylvania 19104, USA.
Center for Computational Biology, Flatiron Institute, Simons Foundation, New York, New York 10010, USA.
Phys Rev E. 2024 Feb;109(2-1):024311. doi: 10.1103/PhysRevE.109.024311.
Interacting many-body physical systems ranging from neural networks in the brain to folding proteins to self-modifying electrical circuits can learn to perform diverse tasks. This learning, both in nature and in engineered systems, can occur through evolutionary selection or through dynamical rules that drive active learning from experience. Here, we show that learning in linear physical networks with weak input signals leaves architectural imprints on the Hessian of a physical system. Compared to a generic organization of the system components, (a) the effective physical dimension of the response to inputs decreases, (b) the response of physical degrees of freedom to random perturbations (or system "susceptibility") increases, and (c) the low-eigenvalue eigenvectors of the Hessian align with the task. Overall, these effects embody the typical scenario for learning processes in physical systems in the weak input regime, suggesting ways of discovering whether a physical network may have been trained.
从大脑中的神经网络到折叠蛋白质再到自我修改的电路等相互作用的多体物理系统都可以学习执行各种任务。这种学习,无论是在自然界还是在工程系统中,都可以通过进化选择或通过驱动从经验中进行主动学习的动态规则来实现。在这里,我们表明,在具有弱输入信号的线性物理网络中进行学习会在物理系统的海森矩阵上留下架构印记。与系统组件的一般组织相比,(a)对输入响应的有效物理维度减小,(b)物理自由度对随机扰动(或系统“敏感性”)的响应增加,并且(c)海森矩阵的低特征值特征向量与任务对齐。总体而言,这些效应体现了弱输入 regime 下物理系统学习过程的典型情况,为发现物理网络是否可能经过训练提供了方法。