Predictive Model
Predictive modeling aims to build computational models that accurately forecast future outcomes based on available data. Current research emphasizes enhancing model accuracy and interpretability, particularly in data-scarce domains, by incorporating latent features (e.g., using large language models), weighting samples based on sub-cohort characteristics, and integrating domain expertise (e.g., physics-informed learning or expert knowledge encoded via LLMs). These advancements are significantly impacting diverse fields, from healthcare (e.g., disease prediction using EHRs and imaging) and environmental science (e.g., weather and solar activity forecasting) to manufacturing (e.g., fault detection) and social sciences (e.g., disinformation network mapping). The focus is on developing robust, reliable models that provide not only accurate predictions but also quantifiable uncertainty estimates.
Papers
Challenges for Predictive Modeling with Neural Network Techniques using Error-Prone Dietary Intake Data
Dylan Spicker, Amir Nazemi, Joy Hutchinson, Paul Fieguth, Sharon I. Kirkpatrick, Michael Wallace, Kevin W. Dodd
Strategic Data Augmentation with CTGAN for Smart Manufacturing: Enhancing Machine Learning Predictions of Paper Breaks in Pulp-and-Paper Production
Hamed Khosravi, Sarah Farhadpour, Manikanta Grandhi, Ahmed Shoyeb Raihan, Srinjoy Das, Imtiaz Ahmed
Using Spark Machine Learning Models to Perform Predictive Analysis on Flight Ticket Pricing Data
Philip Wong, Phue Thant, Pratiksha Yadav, Ruta Antaliya, Jongwook Woo
Kernel Cox partially linear regression: building predictive models for cancer patients' survival
Yaohua Rong, Sihai Dave Zhao, Xia Zheng, Yi Li