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
Limitations of Agents Simulated by Predictive Models
Raymond Douglas, Jacek Karwowski, Chan Bae, Andis Draguns, Victoria Krakovna
Adaptive Activation Functions for Predictive Modeling with Sparse Experimental Data
Farhad Pourkamali-Anaraki, Tahamina Nasrin, Robert E. Jensen, Amy M. Peterson, Christopher J. Hansen
Adaptive Optimization for Prediction with Missing Data
Dimitris Bertsimas, Arthur Delarue, Jean Pauphilet
Recent Advances in Predictive Modeling with Electronic Health Records
Jiaqi Wang, Junyu Luo, Muchao Ye, Xiaochen Wang, Yuan Zhong, Aofei Chang, Guanjie Huang, Ziyi Yin, Cao Xiao, Jimeng Sun, Fenglong Ma
Adaptive Modelling Approach for Row-Type Dependent Predictive Analysis (RTDPA): A Framework for Designing Machine Learning Models for Credit Risk Analysis in Banking Sector
Minati Rath, Hema Date
FREE: The Foundational Semantic Recognition for Modeling Environmental Ecosystems
Shiyuan Luo, Juntong Ni, Shengyu Chen, Runlong Yu, Yiqun Xie, Licheng Liu, Zhenong Jin, Huaxiu Yao, Xiaowei Jia