Using Network Reliability to Understand International Food Trade Dynamics.

Madhurima Nath, Srinivasan Venkatramanan, Bryan Kaperick, Stephen Eubank, Madhav V Marathe, Achla Marathe, Abhijin Adiga
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Abstract

Understanding the structural and dynamical properties of food networks is critical for food security and social welfare. Here, we analyze international trade networks corresponding to four solanaceous crops obtained using the Food and Agricultural Organization trade database using Moore-Shannon network reliability. We present a novel approach to identify important dynamics-induced clusters of highly-connected nodes in a directed weighted network. Our analysis shows that the structure and dynamics can greatly vary across commodities. However, a consistent pattern that we observe in these commodity-specific networks is that almost all clusters that are formed are between adjacent countries in regions where liberal bilateral trade relations exist. Our analysis of networks of different years shows that intensification of trade has led to increased size of clusters, which implies that the number of countries spared from the network effects of disruption is reducing. Finally, applying this method to the aggregate network obtained by combining the four networks reveals clusters very different from those found in the constituent networks.

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利用网络可靠性了解国际食品贸易动态。
了解粮食网络的结构和动态特性对粮食安全和社会福利至关重要。本文采用Moore-Shannon网络可靠性分析了联合国粮农组织贸易数据库获取的四种茄类作物对应的国际贸易网络。我们提出了一种新的方法来识别有向加权网络中重要的高连接节点的动态诱导簇。我们的分析表明,不同商品之间的结构和动态差异很大。然而,我们在这些特定商品网络中观察到的一致模式是,几乎所有形成的集群都是在存在自由双边贸易关系的地区的邻近国家之间形成的。我们对不同年份网络的分析表明,贸易的加剧导致集群规模的扩大,这意味着免受网络中断影响的国家数量正在减少。最后,将该方法应用于由四个网络组合而成的聚合网络,揭示出与组成网络中发现的非常不同的集群。
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