Viegas Eduardo, Goto Hayato, Kobayashi Yuh, Takayasu Misako, Takayasu Hideki, Jensen Henrik Jeldtoft
Centre for Complexity Science and Department of Mathematics, Imperial College London, London SW7 2AZ, UK.
Institute of Innovative Research, Tokyo Institute of Technology, 4259, Nagatsuta-cho, Yokohama 226-8502, Japan.
Entropy (Basel). 2020 Feb 12;22(2):206. doi: 10.3390/e22020206.
Complexity and information theory are two very valuable but distinct fields of research, yet sharing the same roots. Here, we develop a complexity framework inspired by the allometric scaling laws of living biological systems in order to evaluate the structural features of networks. This is done by aligning the fundamental building blocks of information theory (entropy and mutual information) with the core concepts in network science such as the preferential attachment and degree correlations. In doing so, we are able to articulate the meaning and significance of mutual information as a comparative analysis tool for network activity. When adapting and applying the framework to the specific context of the business ecosystem of Japanese firms, we are able to highlight the key structural differences and efficiency levels of the economic activities within each prefecture in Japan. Moreover, we propose a method to quantify the distance of an economic system to its efficient free market configuration by distinguishing and quantifying two particular types of mutual information, total and structural.
复杂性理论和信息理论是两个非常有价值但截然不同的研究领域,不过它们有着共同的根源。在此,我们开发了一个受生物活体系统异速生长比例定律启发的复杂性框架,以便评估网络的结构特征。这是通过将信息理论的基本组成部分(熵和互信息)与网络科学中的核心概念(如优先连接和度相关性)相结合来实现的。通过这样做,我们能够阐明互信息作为网络活动比较分析工具的意义和重要性。当将该框架应用于日本企业商业生态系统的特定背景时,我们能够突出日本各都道府县内经济活动的关键结构差异和效率水平。此外,我们提出了一种方法,通过区分和量化两种特定类型的互信息,即总量互信息和结构互信息,来量化经济系统与其有效自由市场配置之间的距离。