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keywords:
sentence-level detection
ai-generated text detection
human-ai collaboration
Unlike document-level AI-generated text (AIGT) detection, sentence-level AIGT detection remains underexplored, despite its importance for addressing collaborative writing scenarios where humans modify AIGT suggestions on a sentence-by-sentence basis. Prior sentence-level detectors often neglect the valuable context surrounding the target sentence, which may contain crucial linguistic artifacts that indicate a potential change in authorship. We propose GL-CLiC, a novel technique that leverages both Global and Local signals of Coherence and Lexical Complexity, which we operationalize through discourse analysis and CEFR-based vocabulary sophistication. GL-CLiC models local coherence and lexical complexity by examining a sentence's relationship with its neighbors or peers, complemented with its document-wide analysis. Our experimental results show that GL-CLiC achieves superior performance and better generalization across domains compared to existing methods.