LAUD: Integrating Large Language Models with Active Learning for Unlabeled Data

arXiv — cs.LGWednesday, November 19, 2025 at 5:00:00 AM
  • LAUD introduces a novel approach that combines Large Language Models with active learning to effectively utilize unlabeled data, addressing a significant barrier in machine learning applications. This framework allows for the creation of an initial label set through zero
  • The development of LAUD is crucial as it enables practitioners to build high
  • The integration of LLMs with active learning reflects a broader trend in AI research aimed at improving model efficiency and effectiveness. This aligns with ongoing discussions about the need for innovative solutions in fields such as medical reasoning and educational applications, where labeled data is often scarce.
— via World Pulse Now AI Editorial System

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