Batch and incremental dynamic factor machine learning for multivariate and multi-step-ahead forecasting J De Stefani, YA Le Borgne, O Caelen, D Hattab, G Bontempi International Journal of Data Science and Analytics 7 (4), 311-329, 2019 | 25 | 2019 |
Does automl outperform naive forecasting? GM Paldino, J De Stefani, F De Caro, G Bontempi Engineering proceedings 5 (1), 36, 2021 | 23 | 2021 |
DAFT-E: feature-based multivariate and multi-step-ahead wind power forecasting F De Caro, J De Stefani, A Vaccaro, G Bontempi IEEE Transactions on sustainable energy 13 (2), 1199-1209, 2021 | 22 | 2021 |
Machine Learning for Multi-step Ahead Forecasting of Volatility Proxies. J De Stefani, O Caelen, D Hattab, G Bontempi MIDAS@ PKDD/ECML, 17-28, 2017 | 16 | 2017 |
A digital twin approach for improving estimation accuracy in dynamic thermal rating of transmission lines GM Paldino, F De Caro, J De Stefani, A Vaccaro, D Villacci, G Bontempi Energies 15 (6), 2254, 2022 | 15 | 2022 |
Robust assessment of short-term wind power forecasting models on multiple time horizons F De Caro, J De Stefani, G Bontempi, A Vaccaro, D Villacci Technology and Economics of Smart Grids and Sustainable Energy 5, 1-15, 2020 | 14 | 2020 |
A dynamic factor machine learning method for multi-variate and multi-step-ahead forecasting G Bontempi, YA Le Borgne, J De Stefani 2017 IEEE International Conference on Data Science and Advanced Analytics …, 2017 | 11 | 2017 |
Factor-based framework for multivariate and multi-step-ahead forecasting of large scale time series J De Stefani, G Bontempi Frontiers in big Data 4, 690267, 2021 | 9 | 2021 |
A multivariate and multi-step ahead machine learning approach to traditional and cryptocurrencies volatility forecasting J De Stefani, O Caelen, D Hattab, YA Le Borgne, G Bontempi Workshop on Mining Data for Financial Applications, 7-22, 2018 | 5 | 2018 |
Towards multivariate multi-step-ahead time series forecasting: A machine learning perspective J De Stefani Université libre de Bruxelles, 2022 | 3 | 2022 |
DUVEL: an active-learning annotated biomedical corpus for the recognition of oligogenic combinations C Nachtegael, J De Stefani, A Cnudde, T Lenaerts Database 2024, baae039, 2024 | 2 | 2024 |
Transfer learning-based methodologies for Dynamic Thermal Rating of transmission lines GM Paldino, F De Caro, J De Stefani, A Vaccaro, G Bontempi Electric Power Systems Research 229, 110206, 2024 | 1 | 2024 |
A study of deep active learning methods to reduce labelling efforts in biomedical relation extraction C Nachtegael, J De Stefani, T Lenaerts PloS one 18 (12), e0292356, 2023 | 1 | 2023 |
ALAMBIC: Active Learning Automation with Methods to Battle Inefficient Curation C Nachtegael, J De Stefani, T Lenaerts 17th Conference of the European Chapter of the Association for Computational …, 2023 | 1 | 2023 |
System and Method for Managing Risks in a Process J De Stefani, G Bontempi, O Caelen, D Hattab | 1 | 2019 |
Data for Learning in Engineering Education M Specht, S van Esveld, J De Stefani, T Adrichem, A Gherghiceanu Delft University of Technology, 2023 | | 2023 |
Multi-step-ahead prediction of volatility proxies J De Stefani, G Bontempi, O Caelen, D Hattab Benelearn 2017 1 (Proceedings), 105-107, 2017 | | 2017 |
Spatial allocation in swarm robotics J De Stefani Politecnico di Milano, 2013 | | 2013 |
Everything you always wanted to know about ML and videogames (but were afraid to ask) J De Stefani | | |
SPECIAL SECTION ON ADVANCES IN RENEWABLE ENERGY FORECASTING: PREDICTABILITY, BUSINESS MODELS AND APPLICATIONS IN THE POWER INDUSTRY RJ Bessa, P Pinson, G Kariniotakis, D Srinivasan, C Smith, N Amjady, ... | | |