Prediction Model
Prediction models aim to accurately forecast outcomes based on input data, with current research focusing on improving model robustness, interpretability, and fairness. Commonly employed architectures include linear regression, decision trees, support vector machines, neural networks (including deep learning models and transformers), and ensemble methods like XGBoost, often enhanced by techniques like data preprocessing, feature engineering, and counterfactual explanations. These advancements are crucial for diverse applications, ranging from healthcare and finance to environmental monitoring and autonomous systems, improving decision-making and resource allocation across various sectors.
Papers
October 9, 2024
September 2, 2024
A causal viewpoint on prediction model performance under changes in case-mix: discrimination and calibration respond differently for prognosis and diagnosis predictions
Wouter A.C. van Amsterdam
Variation in prediction accuracy due to randomness in data division and fair evaluation using interval estimation
Isao Goto
August 15, 2024
August 5, 2024
July 14, 2024
June 11, 2024
May 31, 2024
May 3, 2024
May 1, 2024
April 11, 2024
February 14, 2024
December 13, 2023
December 2, 2023
November 9, 2023
October 19, 2023
August 25, 2023
August 8, 2023
June 26, 2023