Abstract
This paper applies a Machine Learning approach with the aim of providing a single aggregated prediction from a set of individual predictions. Departing from the well-known maximum-entropy inference methodology, a new factor capturing the distance between the true and the estimated aggregated predictions presents a new problem. Algorithms such as ridge, lasso or elastic net help in finding a new methodology to tackle this issue. We carry out a simulation study to evaluate the performance of such a procedure and apply it in order to forecast and measure predictive ability using a dataset of predictions on Spanish gross domestic product.
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CITATION STYLE
Bretó, C., Espinosa, P., Hernández, P., & Pavía, J. M. (2019). An entropy-based machine learning algorithm for combining macroeconomic forecasts. Entropy, 21(10). https://doi.org/10.3390/e21101015
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