DAMASHA: Detecting AI in Mixed Adversarial Texts via Segmentation with Human-interpretable Attribution

arXiv — cs.CLFriday, December 5, 2025 at 5:00:00 AM
  • A new framework named Info-Mask has been introduced to detect authorship transitions in mixed-adversarial texts, addressing the growing challenge of distinguishing between human and AI-generated content. This framework utilizes stylometric cues and perplexity-driven signals to enhance segmentation accuracy in collaborative human-AI writing.
  • The development of Info-Mask is significant as it aims to improve authenticity and trust in digital content, which is increasingly important in an era where AI-generated text is prevalent. Ensuring clear authorship can help maintain human oversight in content creation.
  • This advancement reflects ongoing efforts in the AI field to enhance content moderation and understanding, as seen in various frameworks that address the complexities of human-AI interaction, including those focused on safety evaluations and the alignment of AI systems with societal values.
— via World Pulse Now AI Editorial System

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