Persistent-Homology-Based Machine Learning and Its Applications -- A Survey

Chi Seng Pun, Kelin Xia, S. Lee
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引用次数: 67

Abstract

A suitable feature representation that can both preserve the data intrinsic information and reduce data complexity and dimensionality is key to the performance of machine learning models. Deeply rooted in algebraic topology, persistent homology (PH) provides a delicate balance between data simplification and intrinsic structure characterization, and has been applied to various areas successfully. However, the combination of PH and machine learning has been hindered greatly by three challenges, namely topological representation of data, PH-based distance measurements or metrics, and PH-based feature representation. With the development of topological data analysis, progresses have been made on all these three problems, but widely scattered in different literatures. In this paper, we provide a systematical review of PH and PH-based supervised and unsupervised models from a computational perspective. Our emphasis is the recent development of mathematical models and tools, including PH softwares and PH-based functions, feature representations, kernels, and similarity models. Essentially, this paper can work as a roadmap for the practical application of PH-based machine learning tools. Further, we consider different topological feature representations in different machine learning models, and investigate their impacts on the protein secondary structure classification.
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基于持续同构的机器学习及其应用综述
一个合适的特征表示既能保留数据的内在信息,又能降低数据的复杂度和维数,是机器学习模型性能的关键。持久同调(PH)深深扎根于代数拓扑,在数据简化和内在结构表征之间提供了微妙的平衡,并已成功地应用于各个领域。然而,PH和机器学习的结合受到三个挑战的极大阻碍,即数据的拓扑表示,基于PH的距离测量或度量,以及基于PH的特征表示。随着拓扑数据分析的发展,这三个问题的研究都取得了一定的进展,但在不同的文献中广泛分散。在本文中,我们从计算的角度对PH和基于PH的监督和无监督模型进行了系统的综述。我们的重点是数学模型和工具的最新发展,包括PH软件和基于PH的函数、特征表示、核和相似模型。从本质上讲,本文可以作为基于ph的机器学习工具实际应用的路线图。此外,我们在不同的机器学习模型中考虑不同的拓扑特征表示,并研究它们对蛋白质二级结构分类的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Introducing Algebraic Topology Complements on categories and topology Relative singular homology and homology theories An introduction to homotopy groups Solution of the exercises
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