This work introduces a methodology for optimizing neural network models using a combination of continuous and categorical binary indices in the context of precipitation forecasting. Probability of detection and false alarm rate are popular metrics used in the verification of precipitation models. However, machine learning models trained using gradient descent cannot be optimized based on these metrics, as they are not differentiable. We propose an alternative formulation for these categorical indices that are differentiable and we demonstrate how they can be used to optimize the skill of precipitation neural network models defined as a multiobjective optimization problem. To our knowledge, this is the first proposal of a methodology for optimizing weather neural network models based on categorical indices.
CITATION STYLE
Larraondo, P. R., Renzullo, L. J., Van Dijk, A. I. J. M., Inza, I., & Lozano, J. A. (2020). Optimization of Deep Learning Precipitation Models Using Categorical Binary Metrics. Journal of Advances in Modeling Earth Systems, 12(5). https://doi.org/10.1029/2019MS001909
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