Tabular Data
Tabular data, ubiquitous in various fields, presents unique challenges for machine learning due to its structured nature and mixed data types. Current research focuses on improving model performance through techniques like self-supervised learning (e.g., JEPA), generative models (e.g., GANs, VAEs, diffusion models) for data augmentation and synthesis, and the integration of large language models (LLMs) for enhanced feature extraction and data generation. These advancements aim to address limitations in existing methods, such as gradient boosted decision trees, and improve accuracy, efficiency, and robustness in applications ranging from medical diagnosis to anomaly detection and scientific simulations.
Papers
Weight Predictor Network with Feature Selection for Small Sample Tabular Biomedical Data
Andrei Margeloiu, Nikola Simidjievski, Pietro Lio, Mateja Jamnik
D\'ecouvrir de nouvelles classes dans des donn\'ees tabulaires
Colin Troisemaine, Joachim Flocon-Cholet, Stéphane Gosselin, Sandrine Vaton, Alexandre Reiffers-Masson, Vincent Lemaire