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A Brief Review of Spin-Glass Applications in Unsupervised and Semi-supervised Learning

机译:简要介绍无监督和半监督学习中的旋转玻璃应用

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Spin-glass theory developed in statistical mechanics has found its usage in various information science problems. In this study, we focus on the application of spin-glass models in unsupervised and semi-supervised learning. Several key papers in this field are reviewed, to answer the question that why and how spin-glass is adopted. The question can be answered from two aspects. Firstly, adopting spin-glass models enables the vast knowledge base developed in statistical mechanics to be used, such as the self-organizing grains at the superparamagnetic phase has a natural connection to clustering. Secondly, spin-glass model can serve as a bridge for model development, i.e., one can map existing model into spin-glass manner, facilitate it with new features and finally map it back.
机译:统计机制开发的旋转玻璃理论已发现其在各种信息科学问题中的用法。在这项研究中,我们专注于旋转玻璃模型在无监督和半监督学习中的应用。综述了该领域的几篇关键论文,回答了为什么采用旋转玻璃的问题。问题可以从两个方面回答。首先,采用旋转玻璃模型使得能够在要使用的统计力学中开发的广大知识库,例如超顺磁相的自组织颗粒具有与聚类的自然连接。其次,旋转玻璃模型可以用作模型开发的桥梁,即,可以将现有模型映射到旋转玻璃方式中,便于新功能,最后将其映射回来。

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