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International Trade Flow Prediction with Bilateral Trade Provisions

International Trade Flow Prediction with Bilateral Trade Provisions ArXiv ID: 2407.13698 “View on arXiv” Authors: Unknown Abstract This paper presents a novel methodology for predicting international bilateral trade flows, emphasizing the growing importance of Preferential Trade Agreements (PTAs) in the global trade landscape. Acknowledging the limitations of traditional models like the Gravity Model of Trade, this study introduces a two-stage approach combining explainable machine learning and factorization models. The first stage employs SHAP Explainer for effective variable selection, identifying key provisions in PTAs, while the second stage utilizes Factorization Machine models to analyze the pairwise interaction effects of these provisions on trade flows. By analyzing comprehensive datasets, the paper demonstrates the efficacy of this approach. The findings not only enhance the predictive accuracy of trade flow models but also offer deeper insights into the complex dynamics of international trade, influenced by specific bilateral trade provisions. ...

June 23, 2024 · 2 min · Research Team

Can I Trust the Explanations? Investigating Explainable Machine Learning Methods for Monotonic Models

Can I Trust the Explanations? Investigating Explainable Machine Learning Methods for Monotonic Models ArXiv ID: 2309.13246 “View on arXiv” Authors: Unknown Abstract In recent years, explainable machine learning methods have been very successful. Despite their success, most explainable machine learning methods are applied to black-box models without any domain knowledge. By incorporating domain knowledge, science-informed machine learning models have demonstrated better generalization and interpretation. But do we obtain consistent scientific explanations if we apply explainable machine learning methods to science-informed machine learning models? This question is addressed in the context of monotonic models that exhibit three different types of monotonicity. To demonstrate monotonicity, we propose three axioms. Accordingly, this study shows that when only individual monotonicity is involved, the baseline Shapley value provides good explanations; however, when strong pairwise monotonicity is involved, the Integrated gradients method provides reasonable explanations on average. ...

September 23, 2023 · 2 min · Research Team