论文标题

从专利数据中预测国家的国内生产总值

Forecasting countries' gross domestic product from patent data

论文作者

Ye, Yucheng, Xu, Shuqi, Mariani, Manuel Sebastian, Lü, Linyuan

论文摘要

经济复杂性的最新进展表明,可以通过单个“经济健身”变量预测国家的未来经济发展,该变量捕捉了国家在国际贸易中的竞争力。这种低维方法的预测可以匹配甚至超过更复杂的方法,例如国际货币基金(IMF)的预测。但是,所有先前在经济复杂性方面的工作旨在量化国家从世界贸易出口数据中的适应性,而没有考虑有可能从替代数据来源中推断国家增长的潜力。在这里,在技术发展与经济增长之间的长期关系的推动下,我们的目标是预测国家从专利数据中的增长。具体来说,我们在欧洲专利局(EPO)数据集的国家之间构建了一个引用网络。最初的结果表明,该网络中的H指数中心性是评估国家经济绩效的潜在候选人。为了验证这一猜想,我们构建了由人均H-指数和GDP定义的二维平面,并使用基于动态系统的预测方法来测试H-索引的预测准确性。我们发现,基于H-Index-GDP平面的预测优于IMF的预测约为35%,而从贸易数据中提取的经济适应性则略高于这些预测。我们的结果可能会激发进一步的尝试,以确定与科学和技术创新有关的不同数据来源的民族增长预测因素。

Recent strides in economic complexity have shown that the future economic development of nations can be predicted with a single "economic fitness" variable, which captures countries' competitiveness in international trade. The predictions by this low-dimensional approach could match or even outperform predictions based on much more sophisticated methods, such as those by the International Monetary Fund (IMF). However, all prior works in economic complexity aimed to quantify countries' fitness from World Trade export data, without considering the possibility to infer countries' potential for growth from alternative sources of data. Here, motivated by the long-standing relationship between technological development and economic growth, we aim to forecast countries' growth from patent data. Specifically, we construct a citation network between countries from the European Patent Office (EPO) dataset. Initial results suggest that the H-index centrality in this network is a potential candidate to gauge national economic performance. To validate this conjecture, we construct a two-dimensional plane defined by the H-index and GDP per capita, and use a forecasting method based on dynamical systems to test the predicting accuracy of the H-index. We find that the predictions based on the H-index-GDP plane outperform the predictions by IMF by approximately 35%, and they marginally outperform those by the economic fitness extracted from trade data. Our results could inspire further attempts to identify predictors of national growth from different sources of data related to scientific and technological innovation.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源