Risk Prediction
Risk prediction research aims to develop accurate and reliable models for forecasting future events, spanning diverse domains like finance, healthcare, and transportation. Current efforts focus on leveraging advanced machine learning techniques, including deep learning architectures such as graph neural networks, recurrent neural networks (like LSTMs), and ensemble methods (e.g., combining XGBoost, LightGBM, and TabNet), often enhanced by techniques to address data imbalance and missing values. These advancements hold significant potential for improving decision-making in various sectors by enabling more precise risk assessments and proactive interventions, ultimately leading to better resource allocation and improved outcomes. Furthermore, research emphasizes explainability and fairness in risk prediction models, addressing concerns about bias and transparency.
Papers
Prediction Risk and Estimation Risk of the Ridgeless Least Squares Estimator under General Assumptions on Regression Errors
Sungyoon Lee, Sokbae Lee
Evaluating the Impact of Social Determinants on Health Prediction in the Intensive Care Unit
Ming Ying Yang, Gloria Hyunjung Kwak, Tom Pollard, Leo Anthony Celi, Marzyeh Ghassemi