世界贸易的矩阵完备性:沙普利值的可解释性分析

IF 2.6 3区 经济学 Q2 BUSINESS, FINANCE
World Economy Pub Date : 2023-07-21 DOI:10.1111/twec.13457
Giorgio Gnecco, Federico Nutarelli, Massimo Riccaboni
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引用次数: 0

摘要

经济复杂性和机器学习最近成为分析国际贸易的流行方法。然而,为了在经济复杂性和政策制定方面有效地使用机器学习,了解预测的关键特征是很重要的。在这个框架中,本文解决了机器学习技术(即矩阵补完备)在应用于经济复杂性时获得的结果的可解释性问题,特别是在预测不同产品类别的国家的显示比较优势(rca)方面。Shapley值被用来衡量每个国家在预测其他国家的rca中所起的作用。当使用余弦相似度等标准相似度量时,与预测相关的国家可能与RCA值与感兴趣的国家相似的国家不同。我们通过集中分析选定的欧洲国家复杂商品的出口多样化,证明了我们的方法在识别可比国家方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matrix completion of world trade: An analysis of interpretability through Shapley values
Economic complexity and machine learning have recently become popular approaches for analysing international trade. However, for effective use of machine learning in relation to economic complexity and policymaking, it is important to understand what are the key features for predictions. In this framework, this article addresses the issue of the interpretability of results obtained with a machine learning technique—namely, matrix completion—when applied to economic complexity, specifically in predicting revealed comparative advantages (RCAs) of countries in different product categories. Shapley values are used to measure the role each country plays in predicting the RCAs of other countries. Countries relevant for prediction may differ from countries whose RCA values are similar to those of the country of interest when a standard similarity measure such as cosine similarity is used. We demonstrate the usefulness of our approach to identifying comparable countries by focussing our analysis on export diversification into complex goods of selected European countries.
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来源期刊
World Economy
World Economy Multiple-
CiteScore
4.50
自引率
8.00%
发文量
124
期刊介绍: The World Economy is a vital resource for researchers, analysts and policy-advisors interested in trade policy and other open economy issues embracing international trade and the environment, international finance, and trade and development. The journal also considers related areas such as economies in transition and development economics, making The World Economy an essential reference for in-depth knowledge on and up-to-date coverage of international economic relations.
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