Parameterless Pruning Algorithms for Similarity-Weight Network and Its Application in Extracting the Backbone of Global Value Chain

Lizhi Xing, Yuanqing Han
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引用次数: 1

Abstract

Abstract Purpose With the availability and utilization of Inter-Country Input-Output (ICIO) tables, it is possible to construct quantitative indices to assess its impact on the Global Value Chain (GVC). For the sake of visualization, ICIO networks with tremendous low- weight edges are too dense to show the substantial structure. These redundant edges, inevitably make the network data full of noise and eventually exert negative effects on Social Network Analysis (SNA). In this case, we need a method to filter such edges and obtain a sparser network with only the meaningful connections. Design/methodology/approach In this paper, we propose two parameterless pruning algorithms from the global and local perspectives respectively, then the performance of them is examined using the ICIO table from different databases. Findings The Searching Paths (SP) method extracts the strongest association paths from the global perspective, while Filtering Edges (FE) method captures the key links according to the local weight ratio. The results show that the FE method can basically include the SP method and become the best solution for the ICIO networks. Research limitations There are still two limitations in this research. One is that the computational complexity may increase rapidly while processing the large-scale networks, so the proposed method should be further improved. The other is that much more empirical networks should be introduced to testify the scientificity and practicability of our methodology. Practical implications The network pruning methods we proposed will promote the analysis of the ICIO network, in terms of community detection, link prediction, and spatial econometrics, etc. Also, they can be applied to many other complex networks with similar characteristics. Originality/value This paper improves the existing research from two aspects, namely, considering the heterogeneity of weights and avoiding the interference of parameters. Therefore, it provides a new idea for the research of network backbone extraction.
相似权网络的无参数修剪算法及其在提取全球价值链骨干中的应用
摘要目的利用国家间投入产出(ICIO)表,可以构建量化指标来评估其对全球价值链的影响。为了可视化,具有大量低权重边缘的ICIO网络过于密集,无法显示其实质结构。这些冗余的边缘不可避免地使网络数据充满噪声,最终对社会网络分析(Social network Analysis, SNA)产生负面影响。在这种情况下,我们需要一种方法来过滤这些边,并获得一个只有有意义连接的更稀疏的网络。本文分别从全局和局部角度提出了两种无参数剪枝算法,并利用不同数据库的ICIO表对其性能进行了检验。发现搜索路径(SP)方法从全局角度提取最强关联路径,过滤边缘(FE)方法根据局部权重比捕获关键环节。结果表明,有限元方法基本可以包含SP方法,成为ICIO网络的最优解。本研究还存在两个局限性。一是在处理大规模网络时,计算复杂度可能会迅速增加,因此该方法有待进一步改进。另一个是应该引入更多的经验网络来证明我们的方法的科学性和实用性。本文提出的网络修剪方法将促进ICIO网络在社区检测、链接预测和空间计量等方面的分析。同样,它们也可以应用于许多其他具有相似特征的复杂网络。本文从考虑权重的异质性和避免参数的干扰两方面对已有研究进行了改进。因此,为网络骨干网提取的研究提供了一种新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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