Beyond Binary: Fine-Grained LLM Content Detection

Beyond Binary: Fine-Grained LLM Content Detection

Recognizing the spectrum of human-AI collaboration in text

This research introduces a novel framework that moves beyond simple binary classification of text as human or AI-generated by recognizing the spectrum of collaboration between humans and LLMs.

  • Proposes a role recognition approach that identifies the specific contributions of humans vs. LLMs
  • Introduces an involvement measurement methodology to quantify the degree of LLM contribution
  • Demonstrates superior performance compared to binary detection methods when evaluating mixed-source content
  • Enables more nuanced content moderation that reflects real-world collaboration scenarios

This advancement is crucial for security professionals as it addresses the growing challenge of detecting sophisticated mixed-source content that could spread misinformation or violate platform policies while allowing legitimate collaborative content.

Beyond Binary: Towards Fine-Grained LLM-Generated Text Detection via Role Recognition and Involvement Measurement

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