CLAIMay 24

READER: Reasoning-Enhanced AI-Generated Text Detection

arXiv:2605.2528173.0
AI Analysis

For the AI text detection community, READER provides a more interpretable and robust method that outperforms much larger models.

READER is a reasoning-enhanced AI text detector that outputs both a label and a structured rationale. With only 1.5B parameters, it outperforms detectors and LLMs 100-1000x larger (GPT-5.2, Gemini-3-Pro, DeepSeek-V3.2).

Recent advances in large language models (LLMs) have made it increasingly difficult to distinguish human-written text from AI-generated content. Many existing detectors train supervised neural classifiers that achieve strong in-distribution performance but are often opaque and can degrade substantially under distribution shift. We present READER, a reasoning-enhanced AI text detector that outputs both a human/AI label and a structured rationale describing the evidence for its decision. A key component of our approach is READ, a curated supervision set of rationales and verdicts. We fine-tune an LLM on READ to build READER, which reasons before detecting at inference time. Despite having only 1.5B parameters, READER consistently outperforms existing detectors as well as prompted, high-capacity LLM baselines (GPT-5.2, Gemini-3-Pro, and DeepSeek-V3.2), which are 100 to 1000 times larger in scale.

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