哪种贸易条款组合能促进增值贸易?机器学习在跨国数据中的应用

IF 0.9 Q3 ECONOMICS Economic Papers Pub Date : 2023-06-15 DOI:10.1111/1759-3441.12398
Sharadendu Sharma, Yadnesh P. Mundhada, Rahul Arora
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引用次数: 0

摘要

随着时间的推移,贸易协定的条款正在发生重大变化,其规定超出了传统的贸易领域,如劳动力市场法规、环境法规和竞争政策。从理论上讲,有研究论证了签署具有深度条款的协定对促进增值贸易的作用,但很少有有利于少数协定的经验验证。本研究试图找出深度贸易协定(DTAs)中包含的对双边增值贸易产生积极影响的一系列条款。本研究采用传统的引力模型框架,并通过现代计量经济学和机器学习工具对其进行了估算,结果表明,在贸易协定中纳入有关建立和维护经济权利的条款可促进成员国之间的增值贸易。值得注意的是,研究发现了三个主要政策领域的结合:技术性贸易壁垒、竞争政策和劳动力市场法规。计量经济学和机器学习方法都证实了这三项条款的重大影响。在当前主要贸易经济体都在调整贸易协定的情况下,了解具体条款的重要性具有现实意义。从政策角度来看,将一系列条款分离开来可能与贸易协定的设计和谈判有关。
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Which Combination of Trade Provisions Promotes Trade in Value-Added? An Application of Machine Learning to Cross-Country Data

Over time, the trade agreements are witnessing a substantial change in their provisions by encompassing provisions beyond their conventional trade domain, such as labour market regulations, environmental regulations and competition policies. Theoretically, studies argued the role of signing an agreement with deep provisions to promote trade in value-added, but empirical verification in favour of a few is rarely available. The present study attempts to identify this set of provisions included in deep trade agreements (DTAs) that positively impact the bilateral trade in value added. Using the traditional gravity model framework and its estimation through modern econometric and machine learning tools, the study shows that incorporating provisions relating to establishing and preserving economic rights in trade agreements promotes trade in value-added among member countries. Notably, the study found the combination of three main policy areas: technical barriers to trade, competition policy and labour market regulations. Both econometric and machine learning methods confirm the significant impact of these three provisions. Understanding the significance of specific provisions holds relevance in the current scenario where major trading economies are calibrating trade agreements. From the policy perspective, disentangling a set of provisions might be relevant for designing and negotiating trade agreements.

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来源期刊
Economic Papers
Economic Papers ECONOMICS-
CiteScore
2.30
自引率
0.00%
发文量
23
期刊介绍: Economic Papers is one of two journals published by the Economics Society of Australia. The journal features a balance of high quality research in applied economics and economic policy analysis which distinguishes it from other Australian journals. The intended audience is the broad range of economists working in business, government and academic communities within Australia and internationally who are interested in economic issues related to Australia and the Asia-Pacific region. Contributions are sought from economists working in these areas and should be written to be accessible to a wide section of our readership. All contributions are refereed.
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