cs.AI updates on arXiv.org 07月03日 12:07
Penalizing Transparency? How AI Disclosure and Author Demographics Shape Human and AI Judgments About Writing
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本文通过大规模实验研究AI辅助透明度对写作评价的影响,发现人类和AI评价者均对披露AI使用持负面态度,且AI评价者对女性和黑人作者作品的无披露评价更偏好,揭示AI披露与作者身份之间的复杂关系。

arXiv:2507.01418v1 Announce Type: cross Abstract: As AI integrates in various types of human writing, calls for transparency around AI assistance are growing. However, if transparency operates on uneven ground and certain identity groups bear a heavier cost for being honest, then the burden of openness becomes asymmetrical. This study investigates how AI disclosure statement affects perceptions of writing quality, and whether these effects vary by the author's race and gender. Through a large-scale controlled experiment, both human raters (n = 1,970) and LLM raters (n = 2,520) evaluated a single human-written news article while disclosure statements and author demographics were systematically varied. This approach reflects how both human and algorithmic decisions now influence access to opportunities (e.g., hiring, promotion) and social recognition (e.g., content recommendation algorithms). We find that both human and LLM raters consistently penalize disclosed AI use. However, only LLM raters exhibit demographic interaction effects: they favor articles attributed to women or Black authors when no disclosure is present. But these advantages disappear when AI assistance is revealed. These findings illuminate the complex relationships between AI disclosure and author identity, highlighting disparities between machine and human evaluation patterns.

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AI辅助透明度 写作评价 AI披露 作者身份 评价模式
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