AI RESEARCH

GenOL: Generating Diverse Examples for Name-only Online Learning

arXiv CS.AI

ArXi:2403.10853v4 Announce Type: replace-cross Online learning methods often rely on supervised data. However, under data distribution shifts, such as in continual learning (CL), where continuously arriving online data streams incorporate new concepts (e.g., classes), real-time manual annotation is impractical due to its costs and latency, which hinder real-time adaptation. To alleviate this, 'name-only' setup has been proposed, requiring only the name of concepts, not the supervised samples.