论文标题
量化多体学习,从平衡和表示学习
Quantifying many-body learning far from equilibrium with representation learning
论文作者
论文摘要
从肥皂气泡到悬浮液再到聚合物的远距离平衡多体系统,学习推动它们的驱动器。通过热力学特性(例如工作吸收和应变)观察到了这种学习。我们超越了这些最初针对平衡环境定义的宏观特性:我们通过机器学习量化统计机械学习。我们的工具包取决于我们在远程平衡统计力学和表示学习之间识别的结构平行,该机制是由包含瓶颈的神经网络(包括变异自动编码器)进行的。我们通过无监督的学习来训练各种自动编码器,以在强驾驶过程中由多体系统假定的配置进行培训。我们分析了神经网络的瓶颈,以衡量多体系统的分类能力,记忆能力,歧视能力和新颖性检测。自旋玻璃的数值模拟说明了我们的技术。该工具包暴露了自组织,从而通过热力学测量方法避免了检测,更可靠,更精确地识别和量化了通过物质的学习。
Far-from-equilibrium many-body systems, from soap bubbles to suspensions to polymers, learn the drives that push them. This learning has been observed via thermodynamic properties, such as work absorption and strain. We move beyond these macroscopic properties that were first defined for equilibrium contexts: We quantify statistical mechanical learning with machine learning. Our toolkit relies on a structural parallel that we identify between far-from-equilibrium statistical mechanics and representation learning, which is undergone by neural networks that contain bottlenecks, including variational autoencoders. We train a variational autoencoder, via unsupervised learning, on configurations assumed by a many-body system during strong driving. We analyze the neural network's bottleneck to measure the many-body system's classification ability, memory capacity, discrimination ability, and novelty detection. Numerical simulations of a spin glass illustrate our technique. This toolkit exposes self-organization that eludes detection by thermodynamic measures, more reliably and more precisely identifying and quantifying learning by matter.