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引用次数: 0
摘要
在国际商务的现实世界中,机器学习(ML)已成为从金融和物流到营销和战略等许多业务中的重要元素。然而,在作为一门科学的国际商务(IB)中,作为分析工具的 ML 还远远没有得到普及。在本文中,我们通过提供模拟数据和真实数据的说明性分析,提出了应改变这种状况的理由。我们认为,如果将算法 ML 技术作为标准分析工具包的一部分,与传统的概率统计方法并驾齐驱,那么国际商务作为一个研究领域就能取得实质性进展。这不仅是因为 ML 提高了预测的准确性,还因为这样做可以从经验上解决复杂性问题,促进国际商业领域的理论发展,使之与复杂的国际商业世界相匹配。在此过程中,我们通过实用教程提供了一些技巧和窍门,这些技巧和窍门都与典型的 ML 流程管道有关。
In the real world of international business, machine learning (ML) is well established as an essential element in many operations, from finance and logistics to marketing and strategy. However, ML as an analytical tool is still far from widespread in international business (IB) as a science. In this article, we offer arguments as to why this should change by providing illustrative analyses with simulated and real data. We argue that IB as a research community could produce substantial progress if algorithmic ML techniques were adopted as part of the standard analytical toolkit, next to traditional probabilistic statistics. This is not only so because ML improves predictive accuracy but also because doing so would permit empirically addressing complexity and facilitate theory development in IB that does justice to the complex world of international businesses. Along the way, we provide tips and tricks by way of practical tutorial, all relating to a typical ML process pipeline.
期刊介绍:
The Selection Committee for the JIBS Decade Award is pleased to announce that the 2023 award will be presented to Anthony Goerzen, Christian Geisler Asmussen, and Bo Bernhard Nielsen for their article titled "Global cities and multinational enterprise location strategy," published in JIBS in 2013 (volume 44, issue 5, pages 427-450).
The prestigious JIBS Decade Award, sponsored by Palgrave Macmillan, recognizes the most influential paper published in the Journal of International Business Studies from a decade earlier. The award will be presented at the annual AIB conference.
To be eligible for the JIBS Decade Award, an article must be one of the top five most cited papers published in JIBS for the respective year. The Selection Committee for this year included Kaz Asakawa, Jeremy Clegg, Catherine Welch, and Rosalie L. Tung, serving as the Committee Chair and JIBS Editor-in-Chief, all from distinguished universities around the world.