论文标题
哪些产品激活产品?可解释的机器学习方法
Which products activate a product? An explainable machine learning approach
论文作者
论文摘要
基于树木的机器学习算法提供了对鉴于其出口篮出口目标产品的可行性的最精确评估。但是,涉及的大量参数阻止了对结果的直接解释,进而阻止了政策指示的解释性。在本文中,我们提出了一项程序,以统计验证可行性评估中使用的产品的重要性。通过这种方式,我们能够确定哪些产品(称为解释器)大大增加了在不久的将来导出目标产品的可能性。解释者自然会确定低维表示,即功能重要性产品空间,从而增强了建议的解释性,并提供了国家出口篮的样本外预测。有趣的是,我们检测到产品的复杂性与其解释者的复杂性之间存在正相关。
Tree-based machine learning algorithms provide the most precise assessment of the feasibility for a country to export a target product given its export basket. However, the high number of parameters involved prevents a straightforward interpretation of the results and, in turn, the explainability of policy indications. In this paper, we propose a procedure to statistically validate the importance of the products used in the feasibility assessment. In this way, we are able to identify which products, called explainers, significantly increase the probability to export a target product in the near future. The explainers naturally identify a low dimensional representation, the Feature Importance Product Space, that enhances the interpretability of the recommendations and provides out-of-sample forecasts of the export baskets of countries. Interestingly, we detect a positive correlation between the complexity of a product and the complexity of its explainers.