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An Algorithmic Information Distortion in Multidimensional Networks

机译:多维网络中的算法信息失真

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Network complexity, network information content analysis, and lossless compressibility of graph representations have been played an important role in network analysis and network modeling. As multidimensional networks, such as time-varying, multilayer, or dynamic multilayer networks, gain more relevancy in network science, it becomes crucial to investigate in which situations universal algorithmic methods based on algorithmic information theory applied to graphs cannot be straightforwardly imported into the multidimensional case. In this direction, as a worst-case scenario of lossless compressibility distortion that increases linearly with the number of distinct dimensions, this article presents a counter-intuitive phenomenon that occurs when dealing with networks within non-uniform and sufficiently large multidimensional spaces. In particular, we demonstrate that the algorithmic information necessary to encode multidimensional networks that are isomorphic to logarithmically compressible monoplex networks may display exponentially larger distortions in the general case.
机译:网络复杂性,网络信息内容分析和图形表示的无损可压缩性在网络分析和网络建模中发挥着重要作用。作为多维网络,例如多层网络,如时变,多层或动态多层网络,在网络科学中获得更多相关性,它变得至关重要,调查基于应用于图形的算法信息理论的情况,不能简单地导入多维信息案件。在这种方向上,作为无损压缩性失真的最坏情况的情况,其随着不同尺寸的数量而线性增加,本文提出了一种反向直观的现象,当处理非均匀且足够大的多维空间内的网络时发生。特别地,我们证明将是对数到对数可压缩的Monoplex网络同性恋的多维网络所需的算法信息可以在常规情况下显示指数较大的扭曲。

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