论文标题
视觉机器学习:通过特征向量,Chladni模式和2D颗粒结构中的社区检测的见解
Visual Machine Learning: Insight through Eigenvectors, Chladni patterns and community detection in 2D particulate structures
论文作者
论文摘要
机器学习(ML)迅速成为一种强大的工具,在极端广泛的学科和商业努力中具有不同的应用程序。通常,ML用作黑匣子,几乎没有提供其输出的启发性合理化。在当前的工作中,我们旨在更好地了解无监督的ML基础的通用直觉,重点是物理系统。这里研究的系统包括六个不同复杂性的六个不同的二维(2-D)颗粒系统。值得注意的是,这项研究的发现对于任何无监督的ML问题都是一般性的,并且不仅限于材料系统。六个研究系统的邻接(连接)矩阵采用了三种基本无监督的ML技术:(i)使用邻接矩阵的主要特征值和特征向量,(II)光谱分解,以及(iii)基于Potts模型的社区检测技术,该技术具有模态性功能。我们证明,在解决一个完全经典的问题的同时,ML技术会产生与量子机械溶液明显连接的功能。解剖这些功能有助于我们通过ML技术的万花筒通过ML技术的万花筒来理解经典的非线性世界与量子机械线性世界之间的深厚联系,这在物理科学和ML的领域都可能产生很大的影响。
Machine learning (ML) is quickly emerging as a powerful tool with diverse applications across an extremely broad spectrum of disciplines and commercial endeavors. Typically, ML is used as a black box that provides little illuminating rationalization of its output. In the current work, we aim to better understand the generic intuition underlying unsupervised ML with a focus on physical systems. The systems that are studied here as test cases comprise of six different 2-dimensional (2-D) particulate systems of different complexities. It is noted that the findings of this study are generic to any unsupervised ML problem and are not restricted to materials systems alone. Three rudimentary unsupervised ML techniques are employed on the adjacency (connectivity) matrix of the six studied systems: (i) using principal eigenvalue and eigenvectors of the adjacency matrix, (ii) spectral decomposition, and (iii) a Potts model based community detection technique in which a modularity function is maximized. We demonstrate that, while solving a completely classical problem, ML technique produces features that are distinctly connected to quantum mechanical solutions. Dissecting these features help us to understand the deep connection between the classical non-linear world and the quantum mechanical linear world through the kaleidoscope of ML technique, which might have far reaching consequences both in the arena of physical sciences and ML.