Om Roy, Avalon Campbell-Cousins, John Stewart Fabila Carrasco, Mario A Parra, Javier Escudero
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引用次数: 0
摘要
非线性动力学在信号分析中发挥着重要作用。常用的、易于解释的非线性测量方法是置换熵(Permutation Entropy)。最近,它被扩展用于图信号分析,从而为不规则域采样数据的非线性分析提供了一个框架。在这里,我们引入了连续版本的置换熵,将其扩展到图域,并开发了一种类似于神经网络的序激活函数。这是向序数深度学习(Ordinal Deep Learning)迈出的一步,序数深度学习是最近提出的一个潜在有效的概念。我们还正式将顺序对比扩展到图领域。我们还引入了长度为 3 的连续版本序对比,并在实验中展示了它们的优势。我们还整合了用于图像分析的特定对比度,并证明它可以很好地推广到图领域,从而可以在类似于熵复杂性的平面上表示以图信号表示的图像。对合成数据(包括分形模式和流行的非线性地图)和现实生活中的 MRI 数据的应用表明了这些新扩展的有效性,以及与现有技术相比的潜在优势。通过将与置换熵相关的最新概念扩展到图领域,我们希望能加速开发更多基于图的熵方法,以便对更广泛的数据进行非线性分析,并与数据科学领域的新兴思想建立联系。
Graph Permutation Entropy: Extensions to the Continuous Case, A step towards Ordinal Deep Learning, and More
Nonlinear dynamics play an important role in the analysis of signals. A
popular, readily interpretable nonlinear measure is Permutation Entropy. It has
recently been extended for the analysis of graph signals, thus providing a
framework for non-linear analysis of data sampled on irregular domains. Here,
we introduce a continuous version of Permutation Entropy, extend it to the
graph domain, and develop a ordinal activation function akin to the one of
neural networks. This is a step towards Ordinal Deep Learning, a potentially
effective and very recently posited concept. We also formally extend ordinal
contrasts to the graph domain. Continuous versions of ordinal contrasts of
length 3 are also introduced and their advantage is shown in experiments. We
also integrate specific contrasts for the analysis of images and show that it
generalizes well to the graph domain allowing a representation of images,
represented as graph signals, in a plane similar to the entropy-complexity one.
Applications to synthetic data, including fractal patterns and popular
non-linear maps, and real-life MRI data show the validity of these novel
extensions and potential benefits over the state of the art. By extending very
recent concepts related to permutation entropy to the graph domain, we expect
to accelerate the development of more graph-based entropy methods to enable
nonlinear analysis of a broader kind of data and establishing relationships
with emerging ideas in data science.