Structural Information and Dynamical Complexity of Networks

理论计算机科学 计算机科学 信息论 通信复杂性 可计算性 熵(时间箭头) 稳健性(进化) 公制(单位) 离散数学 数学 算法 基因 化学 经济 物理 统计 量子力学 生物化学 运营管理
作者
Angsheng Li,Yicheng Pan
出处
期刊:IEEE Transactions on Information Theory [Institute of Electrical and Electronics Engineers]
卷期号:62 (6): 3290-3339 被引量:157
标识
DOI:10.1109/tit.2016.2555904
摘要

In 1953, Shannon proposed the question of quantification of structural information to analyze communication systems. The question has become one of the longest great challenges in information science and computer science. Here, we propose the first metric for structural information. Given a graph G , we define the K-dimensional structural information of G (or structure entropy of G), denoted by H K (G) , to be the minimum overall number of bits required to determine the K-dimensional code of the node that is accessible from random walk in G. The K-dimensional structural information provides the principle for completely detecting the natural or true structure, which consists of the rules, regulations, and orders of the graphs, for fully distinguishing the order from disorder in structured noisy data, and for analyzing communication systems, solving the Shannon's problem and opening up new directions. The K-dimensional structural information is also the first metric of dynamical complexity of networks, measuring the complexity of interactions, communications, operations, and even evolution of networks. The metric satisfies a number of fundamental properties, including additivity, locality, robustness, local and incremental computability, and so on. We establish the fundamental theorems of the one- and two-dimensional structural information of networks, including both lower and upper bounds of the metrics of classic data structures, general graphs, the networks of models, and the networks of natural evolution. We propose algorithms to approximate the K-dimensional structural information of graphs by finding the K-dimensional structure of the graphs that minimizes the K-dimensional structure entropy. We find that the K-dimensional structure entropy minimization is the principle for detecting the natural or true structures in real-world networks. Consequently, our structural information provides the foundation for knowledge discovering from noisy data. We establish a black hole principle by using the two-dimensional structure information of graphs. We propose the natural rank of locally listing algorithms by the structure entropy minimization principle, providing the basis for a next-generation search engine.
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