中间性中心性
中心性
聚类系数
基尼系数
复杂网络
学位分布
索引(排版)
网络分析
脆弱性(计算)
节点(物理)
计算机科学
经济
计量经济学
聚类分析
统计
数学
不平等
计算机安全
工程类
数学分析
结构工程
万维网
经济不平等
电气工程
作者
Xiaowen Lin,Qian Dang,Megan Konar
摘要
The world food system is globalized and interconnected, in which trade plays an increasingly important role in facilitating food availability. We present a novel application of network analysis to domestic food flows within the USA, a country with global importance as a major agricultural producer and trade power. We find normal node degree distributions and Weibull node strength and betweenness centrality distributions. An unassortative network structure with high clustering coefficients exists. These network properties indicate that the USA food flow network is highly social and well-mixed. However, a power law relationship between node betweenness centrality and node degree indicates potential network vulnerability to the disturbance of key nodes. We perform an equality analysis which serves as a benchmark for global food trade, where the Gini coefficient = 0.579, Lorenz asymmetry coefficient = 0.966, and Hoover index = 0.442. These findings shed insight into trade network scaling and proxy free trade and equitable network architectures.
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