Identifying the factors influencing the development of bilateral investment treaties with health safeguards: a Machine Learning-based link prediction approach.

IF 2 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS
Journal of Computational Social Science Pub Date : 2025-01-01 Epub Date: 2024-12-05 DOI:10.1007/s42001-024-00341-z
Haohui Lu, Anne Marie Thow, Dori Patay, Takwa Tissaoui, Nicholas Frank, Holly Rippin, Tien Dat Hoang, Fabio Gomes, Wolfgang Alschner, Shahadat Uddin
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Abstract

A network analysis approach, complemented by machine learning (ML) techniques, is applied to analyse the factors influencing Bilateral Investment Treaties (BITs) at the country level. Using the Electronic Database of Investment Treaties, BITs with health safeguards from 167 countries were charted, resulting in 534 connections with countries as nodes and their BITs as edges. Network analysis found that, on average, a country established BITs with six other nations. Additionally, we used node embedding techniques to generate features from the network, such as the Jaccard coefficient, resource allocation, and Adamic Adar for downstream link prediction. This study employed five tree-based ML models to predict future BIT formations with health inclusion. The eXtreme Gradient Boosting model proved to be superior, achieving a 64.02% accuracy rate. Notably, the Common Neighbor centrality feature and the Capital Account Balance Ratio emerged as influential factors in creating new BITs with health inclusions. Beyond economic considerations, our study highlighted a vital intersection: the nexus between BITs, economic growth, and public health policies. In essence, this research underscores the importance of safeguarding public health in BITs and showcases the potential of ML in understanding the intricacies of international treaties.

确定影响制定具有健康保障的双边投资条约的因素:基于机器学习的联系预测方法。
采用网络分析方法,辅以机器学习(ML)技术,在国家一级分析影响双边投资条约(BITs)的因素。利用投资条约电子数据库,绘制了167个国家的具有卫生保障措施的双边投资协定图表,结果将534个国家作为节点,将它们的双边投资协定作为边缘。网络分析发现,平均而言,一个国家与其他六个国家建立了双边投资协定。此外,我们使用节点嵌入技术从网络中生成特征,如Jaccard系数、资源分配和用于下游链路预测的Adamic Adar。本研究采用了五种基于树的机器学习模型来预测未来具有健康包容性的BIT地层。结果表明,eXtreme Gradient Boosting模型的准确率达到了64.02%。值得注意的是,共同邻国中心性特征和资本账户余额比率成为创建包含卫生内容的新双边投资协定的影响因素。除了经济方面的考虑,我们的研究还强调了一个重要的交叉点:双边投资协定、经济增长和公共卫生政策之间的联系。从本质上讲,这项研究强调了在双边投资协定中保护公共卫生的重要性,并展示了机器学习在理解错综复杂的国际条约方面的潜力。
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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来源期刊
Journal of Computational Social Science
Journal of Computational Social Science SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
6.20
自引率
6.20%
发文量
30
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