Inter Vendor Harmonization

Inter-vendor harmonization aims to reconcile inconsistencies in data generated by different sources or methods, improving data reliability and enabling more robust analyses. Current research focuses on developing advanced harmonization techniques using generative models like diffusion models and variational autoencoders, as well as leveraging structured data representations and federated learning approaches to handle diverse datasets. These advancements are crucial for improving the quality and generalizability of machine learning models across various domains, including medical imaging, genomics, and energy consumption analysis, ultimately leading to more reliable and impactful scientific discoveries and practical applications.

Papers