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
Real-Time Packet Loss Concealment With Mixed Generative and Predictive Model
Jean-Marc Valin, Ahmed Mustafa, Christopher Montgomery, Timothy B. Terriberry, Michael Klingbeil, Paris Smaragdis, Arvindh Krishnaswamy
Are Metrics Enough? Guidelines for Communicating and Visualizing Predictive Models to Subject Matter Experts
Ashley Suh, Gabriel Appleby, Erik W. Anderson, Luca Finelli, Remco Chang, Dylan Cashman
Hierarchical Bayesian Modelling for Knowledge Transfer Across Engineering Fleets via Multitask Learning
L. A. Bull, D. Di Francesco, M. Dhada, O. Steinert, T. Lindgren, A. K. Parlikad, A. B. Duncan, M. Girolami
Explaining Adverse Actions in Credit Decisions Using Shapley Decomposition
Vijayan N. Nair, Tianshu Feng, Linwei Hu, Zach Zhang, Jie Chen, Agus Sudjianto