cs.AI updates on arXiv.org 10月16日 12:22
人类标签多样性在AI系统中的重要性
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本文探讨了人类标签多样性(HLV)在自然语言处理中的重要性,指出当前偏好学习数据集未能有效处理HLV,呼吁在AI系统设计中主动融入HLV。

arXiv:2510.12817v1 Announce Type: cross Abstract: Human Label Variation (HLV) refers to legitimate disagreement in annotation that reflects the genuine diversity of human perspectives rather than mere error. For decades, HLV in NLP was dismissed as noise to be discarded, and only slowly over the last decade has it been reframed as a signal for improving model robustness. With the rise of large language models (LLMs), where post-training on human feedback has become central to model alignment, the role of HLV has become increasingly consequential. Yet current preference-learning datasets routinely aggregate multiple annotations into a single label, thereby flattening diverse perspectives into a false universal agreement and erasing precisely the pluralism of human values that alignment aims to preserve. In this position paper, we argue that preserving HLV as an embodiment of human pluralism must be treated as a Selbstzweck - a goal it self when designing AI systems. We call for proactively incorporating HLV into preference datasets and outline actionable steps towards it.

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人类标签多样性 自然语言处理 AI系统设计
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