Centre for Complexity Science and Department of Mathematics, Imperial College London, SW7 2AZ, London, United Kingdom.
Institute of Innovative Research, Tokyo Institute of Technology, 4259, Nagatsuta-cho, Yokohama, 226-8502, Japan.
Sci Rep. 2019 Jul 30;9(1):11075. doi: 10.1038/s41598-019-47490-0.
The analysis of interfirm business transaction networks provides invaluable insight into the trading dynamics and economic structure of countries. However, there is a general scarcity of data available recording real, accurate and extensive information for these types of networks. As a result, and in common with other types of network studies - such as protein interactions for instance - research tends to rely on partial and incomplete datasets, i.e. subsets, with less certain conclusions. Here, we make use of unstructured financial and corporate reporting data in Japan as the base source to construct a financial reporting network, which is then compared and contrasted to the wider real business transaction network. The comparative analysis between these two rich datasets - the proxy, partially derived network and the real, complete network at macro as well as local structural levels - provides an enhanced understanding of the non trivial relationships between partial sampled subsets and fully formed networks. Furthermore, we present an elemental agent based pruning algorithm that reconciles and preserves key structural differences between these two networks, which may serve as an embryonic generic framework of potentially wider use to network research, enabling enhanced extrapolation of conclusions from partial data or subsets.
企业间业务交易网络的分析为了解国家的交易动态和经济结构提供了宝贵的见解。然而,通常缺乏可用的数据来记录这些类型网络的真实、准确和广泛的信息。因此,与其他类型的网络研究(例如蛋白质相互作用)一样,研究往往依赖于部分和不完整的数据集,即子集,得出的结论也不太确定。在这里,我们利用日本非结构化的财务和公司报告数据作为基础来源来构建财务报告网络,然后将其与更广泛的实际业务交易网络进行比较和对比。在宏观和局部结构层面上,对这两个丰富数据集(代理、部分派生网络和真实、完整网络)之间的比较分析提供了对部分采样子集和完全形成网络之间非平凡关系的增强理解。此外,我们提出了一种基于基本代理的修剪算法,该算法可以协调和保留这两个网络之间的关键结构差异,这可能成为网络研究中更广泛应用的潜在通用框架,从而能够从部分数据或子集进行更有效的推断。