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arXiv 提交日期: 2026-06-24
📄 Abstract - Charting the Growth of Social-Physical HRI (spHRI): A Systematic Review Pipeline Augmented by Small Language Models

Social-physical human-robot interaction (spHRI) has grown rapidly across robotics, human-computer interaction, human-robot interaction, and haptics. Yet, fragmented terminology and inconsistent methodologies make systematic synthesis difficult. To support scalable review practices, we evaluated the extent to which small language models (SLMs; < 1.5B parameters) can assist with title and abstract screening for a large spHRI systematic review. While no SLMs matched human reviewers' performance, the models operated locally and screened papers orders of magnitude faster. The combined SLM ensemble identified 39 papers reviewers missed, representing 10.29% of the final relevant dataset. These results demonstrate that SLMs can augment, rather than replace, expert reviewers and make large-scale literature reviews accessible and sustainable.

顶级标签: robotics natural language processing systems
详细标签: human-robot interaction systematic review small language models literature screening social-physical hri 或 搜索:

社会-物理人机交互的增长:基于小型语言模型增强的系统性文献综述流程 / Charting the Growth of Social-Physical HRI (spHRI): A Systematic Review Pipeline Augmented by Small Language Models


1️⃣ 一句话总结

本文提出了一种利用小型语言模型辅助筛选大量学术论文标题和摘要的方法,尽管其准确性不及人类专家,但能以极快速度处理文献,并帮助发现人类审稿者遗漏的论文,让大规模文献综述工作变得更高效和可持续。

源自 arXiv: 2606.26382