Random Forest
Random forests are ensemble learning methods that combine multiple decision trees to improve predictive accuracy and robustness. Current research focuses on enhancing their performance through techniques like optimizing bootstrap sampling rates, improving feature selection methods (e.g., using integrated path stability selection), and developing efficient machine unlearning frameworks to address privacy concerns. These advancements are impacting diverse fields, from medical diagnosis and finance to materials science and environmental monitoring, by providing accurate and interpretable predictive models for complex datasets.
Papers
Assessing dengue fever risk in Costa Rica by using climate variables and machine learning techniques
Luis A. Barboza, Shu-Wei Chou, Paola Vásquez, Yury E. García, Juan G. Calvo, Hugo C. Hidalgo, Fabio Sanchez
3D Adapted Random Forest Vision (3DARFV) for Untangling Heterogeneous-Fabric Exceeding Deep Learning Semantic Segmentation Efficiency at the Utmost Accuracy
Omar Alfarisi, Zeyar Aung, Qingfeng Huang, Ashraf Al-Khateeb, Hamed Alhashmi, Mohamed Abdelsalam, Salem Alzaabi, Haifa Alyazeedi, Anthony Tzes
Wind speed forecast using random forest learning method
G. V. Drisya, Valsaraj P., K. Asokan, K. Satheesh Kumar