Learning To Rewrite: Generalized Llm-generated Text Detection · The Large Language Model Bible Contribute to LLM-Bible

Learning To Rewrite: Generalized Llm-generated Text Detection

Hao Wei, Li Ran, Zhao Weiliang, Yang Junfeng, Mao Chengzhi. Arxiv 2024

[Paper]    
GPT Model Architecture Reinforcement Learning Training Techniques

Large language models (LLMs) can be abused at scale to create non-factual content and spread disinformation. Detecting LLM-generated content is essential to mitigate these risks, but current classifiers often fail to generalize in open-world contexts. Prior work shows that LLMs tend to rewrite LLM-generated content less frequently, which can be used for detection and naturally generalizes to unforeseen data. However, we find that the rewriting edit distance between human and LLM content can be indistinguishable across domains, leading to detection failures. We propose training an LLM to rewrite input text, producing minimal edits for LLM-generated content and more edits for human-written text, deriving a distinguishable and generalizable edit distance difference across different domains. Experiments on text from 21 independent domains and three popular LLMs (e.g., GPT-4o, Gemini, and Llama-3) show that our classifier outperforms the state-of-the-art zero-shot classifier by up to 20.6% on AUROC score and the rewriting classifier by 9.2% on F1 score. Our work suggests that LLM can effectively detect machine-generated text if they are trained properly.

Similar Work