Author
Listed:
- Davood Pirayesh Neghab
(Toronto Metropolitan University)
- Mucahit Cevik
(Toronto Metropolitan University)
- M. I. M. Wahab
(Toronto Metropolitan University)
- Ayse Basar
(Toronto Metropolitan University)
Abstract
The complexity and ambiguity of financial and economic systems, along with frequent changes in the economic environment, have made it difficult to make precise predictions that are supported by theory-consistent explanations. Interpreting the prediction models used for forecasting important macroeconomic indicators is highly valuable for understanding relations among different factors, increasing trust towards the prediction models, and making predictions more actionable. In this study, we develop a fundamental-based model for the Canadian–U.S. dollar exchange rate within an interpretative framework. We propose a comprehensive approach using machine learning to predict the exchange rate and employ interpretability methods to accurately analyze the relationships among macroeconomic variables. Moreover, we implement an ablation study based on the output of the interpretations to improve the predictive accuracy of the models. Our empirical results show that crude oil, as Canada’s main commodity export, is the leading factor that determines the exchange rate dynamics with time-varying effects. The changes in the sign and magnitude of the contributions of crude oil to the exchange rate are consistent with significant events in the commodity and energy markets and the evolution of the crude oil trend in Canada. Gold and the TSX stock index are found to be the second and third most important variables that influence the exchange rate. Accordingly, this analysis provides trustworthy and practical insights for policymakers and economists and accurate knowledge about the predictive model’s decisions, which are supported by theoretical considerations.
Suggested Citation
Davood Pirayesh Neghab & Mucahit Cevik & M. I. M. Wahab & Ayse Basar, 2025.
"Explaining Exchange Rate Forecasts with Macroeconomic Fundamentals Using Interpretive Machine Learning,"
Computational Economics, Springer;Society for Computational Economics, vol. 65(4), pages 1857-1899, April.
Handle:
RePEc:kap:compec:v:65:y:2025:i:4:d:10.1007_s10614-024-10617-1
DOI: 10.1007/s10614-024-10617-1
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