Prototypical Learning

Prototypical learning is a machine learning approach that leverages representative examples, or prototypes, of each class to improve classification and other tasks, particularly in low-data regimes. Current research focuses on enhancing prototype representation and learning, exploring techniques like mixture models, hyperbolic embeddings, and integration with transformer architectures to improve accuracy and generalization across domains and tasks, including few-shot learning and open-set recognition. This methodology shows promise for applications ranging from medical image analysis and exercise form correction to natural language processing, offering more efficient and robust solutions where labeled data is scarce or noisy.

Papers