External Validation
External validation in various fields focuses on rigorously assessing the performance and generalizability of models beyond their initial training data. Current research emphasizes robust validation strategies, often employing techniques like k-fold cross-validation, weighted importance sampling, and external test sets from diverse sources to ensure reliable performance across different contexts. This is crucial for building trust in AI systems across diverse applications, from medical diagnosis and prognosis to autonomous vehicle control and software testing, ultimately improving the reliability and impact of these technologies. The development of standardized validation frameworks and benchmarks is a growing trend, aiming to enhance reproducibility and comparability of results across studies.
Papers
Wind speed super-resolution and validation: from ERA5 to CERRA via diffusion models
Fabio Merizzi, Andrea Asperti, Stefano Colamonaco
Validation of artificial neural networks to model the acoustic behaviour of induction motors
F. J. Jimenez-Romero, D. Guijo-Rubio, F. R. Lara-Raya, A. Ruiz-Gonzalez, C. Hervas-Martinez
Analysis and Validation of Image Search Engines in Histopathology
Isaiah Lahr, Saghir Alfasly, Peyman Nejat, Jibran Khan, Luke Kottom, Vaishnavi Kumbhar, Areej Alsaafin, Abubakr Shafique, Sobhan Hemati, Ghazal Alabtah, Nneka Comfere, Dennis Murphee, Aaron Mangold, Saba Yasir, Chady Meroueh, Lisa Boardman, Vijay H. Shah, Joaquin J. Garcia, H. R. Tizhoosh
A Survey on Verification and Validation, Testing and Evaluations of Neurosymbolic Artificial Intelligence
Justus Renkhoff, Ke Feng, Marc Meier-Doernberg, Alvaro Velasquez, Houbing Herbert Song