外国直接投资的决定因素:来自55个国家的贝叶斯模型平均方法

Erhan Çene, Filiz Karaman
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引用次数: 0

摘要

目的:本研究旨在探讨来自4大洲、3个不同发展水平的55个国家的外商直接投资(FDI)决定因素。方法:构建了1995-2019年期间包含17个候选自变量的面板数据集,并对每个大陆和每个发展水平采用贝叶斯模型平均(BMA)来揭示外国直接投资的决定因素。结果:结果表明,无论发展水平和大洲,全球化都是吸引FDI的首要因素。但也有其他因素影响外国直接投资,根据国家的发展水平和地理位置不同。转型期经济体的外国直接投资受益于合格的劳动力,这对发达国家产生负面影响,对发展中国家没有影响。腐败只在发展中国家有效。中等教育在欧洲和亚洲国家是有效的,高等教育在美洲国家是有效的。本研究通过在面板数据背景下使用BMA方法来贡献文献。BMA使用所有可能模型的加权平均值,比单一模型给出更平衡的结果。将BMA分别应用于不同大陆和发展水平的国家,可以根据地区和财富进行推断。独创性:本研究使用了一个相当大的数据集,在选择的时间段,国家数量和选择的变量方面,大多数研究缺乏。此外,将BMA应用于面板数据集的优势是显而易见的,因为它既控制了横截面变化,又考虑了所有可能线性回归结果的加权平均值,而不是只给出单一线性回归模型结果。因此,在面板数据集上应用BMA可以更好地了解哪些变量应被视为外国直接投资的决定因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determinants of Foreign Direct Investment: A Bayesian Model Averaging Approach From 55 Countries
Purpose: This study aims to investigate the determinants of Foreign Direct Investment (FDI) for the 55 countries from 4 different continents and 3 different development levels. Method: A panel dataset is constructed over the period of 1995-2019 with 17 candidate independent variables and Bayesian Model Averaging (BMA) is employed for each continent and for each development level to reveal the determinants of FDI. Results: Results showed that globalization is the primary factor to attract FDI regardless of the development level and continent. But there are also other factors that affect FDI which differ based on the development level and geographic location of the country. FDI in transition economies benefits from qualified labor force which negatively affects developed countries and has no effect on developing countries. Corruption is only effective in developing countries. Secondary education is effective at European and Asian countries, tertiary education is effective on American countries. This study contributes the literature by using a BMA method in a panel data context. BMA uses weighted average of all the possible models which gives more balanced results than a single model. Applying BMA to the countries in different continents and development levels separately allows to make inferences based on region and wealth. Originality: This study used a fairly large dataset on terms of selected time period, number of countries and selected variables which most of the studies lack of. Also, the advantage of applying BMA to a panel dataset, is obvious as both controls the cross section variation and also considers a weighted average of all possible linear regression results rather than giving only a single linear regression model result. Thus applying BMA on a panel dataset give a better insight as to which variables should be considered as determinants of FDI.
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