Out-of-Distribution Detection with Positive and Negative Prompt Supervision Using Large Language Models

arXiv — cs.CVMonday, November 17, 2025 at 5:00:00 AM
  • The research presents a novel approach to out
  • This development is significant as it aims to improve the accuracy of OOD detection, which is crucial for various applications in artificial intelligence, particularly in vision
  • While there are no directly related articles, the methodology and focus on improving OOD detection performance resonate with ongoing discussions in AI research, emphasizing the importance of refining classification techniques.
— via World Pulse Now AI Editorial System

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