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AI-enhanced semantic feature norms for 786 concepts

AI-enhanced semantic feature norms for 786 concepts

来源:Arxiv_logoArxiv
英文摘要

Semantic feature norms have been foundational in the study of human conceptual knowledge, yet traditional methods face trade-offs between concept/feature coverage and verifiability of quality due to the labor-intensive nature of norming studies. Here, we introduce a novel approach that augments a dataset of human-generated feature norms with responses from large language models (LLMs) while verifying the quality of norms against reliable human judgments. We find that our AI-enhanced feature norm dataset, NOVA: Norms Optimized Via AI, shows much higher feature density and overlap among concepts while outperforming a comparable human-only norm dataset and word-embedding models in predicting people's semantic similarity judgments. Taken together, we demonstrate that human conceptual knowledge is richer than captured in previous norm datasets and show that, with proper validation, LLMs can serve as powerful tools for cognitive science research.

Siddharth Suresh、Kushin Mukherjee、Tyler Giallanza、Xizheng Yu、Mia Patil、Jonathan D. Cohen、Timothy T. Rogers

信息科学、信息技术自然科学研究方法

Siddharth Suresh,Kushin Mukherjee,Tyler Giallanza,Xizheng Yu,Mia Patil,Jonathan D. Cohen,Timothy T. Rogers.AI-enhanced semantic feature norms for 786 concepts[EB/OL].(2025-05-15)[2025-06-21].https://arxiv.org/abs/2505.10718.点此复制

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