Case Relevance
"Case relevance" broadly refers to research investigating how effectively models, particularly in machine learning and natural language processing, identify and utilize relevant information within data for specific tasks. Current research focuses on improving model explainability, addressing data imbalances, and enhancing the performance of various architectures, including transformers, convolutional neural networks, and ensemble methods, across diverse applications like legal text analysis, weather prediction, and direct mail marketing. This work is significant because it directly impacts the reliability, efficiency, and ethical implications of AI systems across numerous fields, driving improvements in model accuracy, interpretability, and resource utilization.
Papers
Exploiting Asymmetry for Synthetic Training Data Generation: SynthIE and the Case of Information Extraction
Martin Josifoski, Marija Sakota, Maxime Peyrard, Robert West
Computing formation enthalpies through an explainable machine learning method: the case of Lanthanide Orthophosphates solid solutions
Edoardo Di Napoli, Xinzhe Wu, Thomas Bornhake, Piotr M. Kowalski