Model Development
Model development in machine learning encompasses the creation and optimization of algorithms to solve specific problems, focusing on improving accuracy, efficiency, and interpretability. Current research emphasizes robust training methodologies, leveraging generative AI and large language models to automate aspects of the process, and developing new architectures like transformers for tasks such as natural language processing and image analysis. This field is crucial for advancing various scientific disciplines and practical applications, from medical diagnosis and drug discovery to building energy management and industrial quality control, by enabling the creation of more accurate, efficient, and reliable predictive models.
Papers
When accurate prediction models yield harmful self-fulfilling prophecies
Wouter A.C. van Amsterdam, Nan van Geloven, Jesse H. Krijthe, Rajesh Ranganath, Giovanni Ciná
Predicting Postoperative Nausea And Vomiting Using Machine Learning: A Model Development and Validation Study
Maxim Glebov, Teddy Lazebnik, Boris Orkin, Haim Berkenstadt, Svetlana Bunimovich-Mendrazitsky