Tabular Prediction

Tabular prediction focuses on building accurate and reliable predictive models for data organized in tables, a ubiquitous format across diverse fields. Current research emphasizes improving model accuracy and efficiency through hybrid approaches combining gradient boosted decision trees (GBDTs) and deep neural networks (DNNs), exploring novel architectures like those incorporating graph structures or language models, and addressing challenges like handling imbalanced data and out-of-distribution generalization. These advancements are significant because they enhance the reliability and applicability of predictive models in various domains, from healthcare and finance to environmental science and engineering.

Papers