Foreign direct investment and local interpretable model-agnostic explanations: a rational framework for FDI decision making

Devesh Singh
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Abstract

PurposeThis study aims to examine foreign direct investment (FDI) factors and develops a rational framework for FDI inflow in Western European countries such as France, Germany, the Netherlands, Switzerland, Belgium and Austria.Design/methodology/approachData for this study were collected from the World development indicators (WDI) database from 1995 to 2018. Factors such as economic growth, pollution, trade, domestic capital investment, gross value-added and the financial stability of the country that influence FDI decisions were selected through empirical literature. A framework was developed using interpretable machine learning (IML), decision trees and three-stage least squares simultaneous equation methods for FDI inflow in Western Europe.FindingsThe findings of this study show that there is a difference between the most important and trusted factors for FDI inflow. Additionally, this study shows that machine learning (ML) models can perform better than conventional linear regression models.Research limitations/implicationsThis research has several limitations. Ideally, classification accuracies should be higher, and the current scope of this research is limited to examining the performance of FDI determinants within Western Europe.Practical implicationsThrough this framework, the national government can understand how investors make their capital allocation decisions in their country. The framework developed in this study can help policymakers better understand the rationality of FDI inflows.Originality/valueAn IML framework has not been developed in prior studies to analyze FDI inflows. Additionally, the author demonstrates the applicability of the IML framework for estimating FDI inflows in Western Europe.
外国直接投资与当地可解释模式的解释:外国直接投资决策的合理框架
目的 本研究旨在考察外国直接投资(FDI)因素,并为法国、德国、荷兰、瑞士、比利时和奥地利等西欧国家的FDI流入制定合理框架。 设计/方法/途径 本研究的数据收集自1995年至2018年的世界发展指标(WDI)数据库。通过实证文献选择了影响外国直接投资决策的因素,如经济增长、污染、贸易、国内资本投资、总附加值和国家的金融稳定性。使用可解释的机器学习(IML)、决策树和三阶段最小二乘法同时方程法,为西欧的外国直接投资流入建立了一个框架。研究结果本研究的结果表明,外国直接投资流入的最重要因素和可信因素之间存在差异。此外,本研究还表明,机器学习(ML)模型比传统的线性回归模型表现更好。理想情况下,分类准确率应该更高,而且目前的研究范围仅限于研究西欧的外国直接投资决定因素的表现。本研究建立的框架可以帮助政策制定者更好地理解外国直接投资流入的合理性。原创性/价值在之前的研究中,尚未建立 IML 框架来分析外国直接投资的流入。此外,作者还证明了 IML 框架适用于估算西欧的外国直接投资流入量。
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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