Squartini Tiziano, Fagiolo Giorgio, Garlaschelli Diego
CSC and Department of Physics, University of Siena, Via Roma 56, 53100 Siena, Italy.
Phys Rev E Stat Nonlin Soft Matter Phys. 2011 Oct;84(4 Pt 2):046117. doi: 10.1103/PhysRevE.84.046117. Epub 2011 Oct 31.
The international trade network (ITN) has received renewed multidisciplinary interest due to recent advances in network theory. However, it is still unclear whether a network approach conveys additional, nontrivial information with respect to traditional international-economics analyses that describe world trade only in terms of local (first-order) properties. In this and in a companion paper, we employ a recently proposed randomization method to assess in detail the role that local properties have in shaping higher-order patterns of the ITN in all its possible representations (binary or weighted, directed or undirected, aggregated or disaggregated by commodity) and across several years. Here we show that, remarkably, the properties of all binary projections of the network can be completely traced back to the degree sequence, which is therefore maximally informative. Our results imply that explaining the observed degree sequence of the ITN, which has not received particular attention in economic theory, should instead become one the main focuses of models of trade.
由于网络理论的最新进展,国际贸易网络(ITN)重新引起了多学科的关注。然而,相对于仅根据局部(一阶)属性描述世界贸易的传统国际经济学分析而言,网络方法是否能传达额外的、重要的信息仍不明确。在本文以及一篇配套论文中,我们采用一种最近提出的随机化方法,详细评估局部属性在塑造ITN所有可能表示形式(二元或加权、有向或无向、按商品聚合或分解)以及多年间高阶模式方面所起的作用。我们在此表明,值得注意的是,网络所有二元投影的属性都可以完全追溯到度序列,因此度序列具有最大信息量。我们的结果意味着,解释ITN中未在经济理论中受到特别关注的观测度序列,反而应成为贸易模型的主要重点之一。