Building better forecasting pipelines: A generalizable guide to multi-output spatio-temporal forecasting
Keywords: forecasting, genetic algorithm, multi-output, deep learning
Abstract
The demand for accurate Multi-Output Spatio-temporal Forecasting is rising in areas like public safety, urban mobility, and climate variability. Traditional methods struggle with model calibration and data integration. This paper presents a methodological guideline for creating forecasting pipelines that handle multi-output forecasting complexities. Using a uniform methodology tested on three diverse datasets, the framework combines genetic algorithms and advanced models to optimize forecasting. Our evaluation shows significant performance improvements, with better adaptability to urban and rural datasets, aiding decision-making in spatio-temporal analysis. The framework achieved a 20% average improvement in the R2 metric across all datasets, outperforming benchmark models. © 2024
Más información
| Título según WOS: | Building better forecasting pipelines: A generalizable guide to multi-output spatio-temporal forecasting |
| Título según SCOPUS: | Building better forecasting pipelines: A generalizable guide to multi-output spatio-temporal forecasting |
| Título de la Revista: | Expert Systems with Applications |
| Volumen: | 259 |
| Editorial: | Elsevier Ltd. |
| Fecha de publicación: | 2025 |
| Idioma: | English |
| DOI: |
10.1016/j.eswa.2024.125384 |
| Notas: | ISI, SCOPUS |