打造更好的律师:人工智能可提高法律工作效率的实验证据

IF 1.2 2区 社会学 Q1 LAW Journal of Empirical Legal Studies Pub Date : 2024-11-17 DOI:10.1111/jels.12396
Aileen Nielsen, Stavroula Skylaki, Milda Norkute, Alexander Stremitzer
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引用次数: 0

摘要

人工智能(AI)技术的迅速发展为法律实践中的人机合作创造了机会。我们以法学院学生(N = 206)为实验对象,通过自然语言输入和多维人工智能输出,提供了机器辅助对私法环境中法律任务完成效率的因果影响的证据。我们测试了两种形式的机器辅助:人工智能生成的法律投诉摘要和人工智能生成的投诉内容高亮文本。与没有人工智能辅助的情况相比,人工智能生成的高亮文本将任务完成时间缩短了 30%,而测量的质量指标却没有任何下降。人工智能生成的摘要没有改变绩效指标。人工智能摘要和人工智能突出显示共同提高了效率,但提高幅度不如单独使用人工智能突出显示。我们的研究结果表明,人工智能支持可以显著提高法律任务的完成效率,但找到人工智能辅助的最佳形式是一项微调工作。目前,最先进的、面向消费者的大型语言模型还不能随时提供人工智能生成的高亮显示,但我们的工作表明,在开发法律人工智能产品时应优先考虑这一功能。
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Building a better lawyer: Experimental evidence that artificial intelligence can increase legal work efficiency

Rapidly improving artificial intelligence (AI) technologies have created opportunities for human–machine cooperation in legal practice. We provide evidence from an experiment with law students (N = 206) on the causal impact of machine assistance on the efficiency of legal task completion in a private law setting with natural language inputs and multidimensional AI outputs. We tested two forms of machine assistance: AI-generated summaries of legal complaints and AI-generated text highlighting within those complaints. AI-generated highlighting reduced task completion time by 30% without any reduction in measured quality indicators compared to no AI assistance. AI-generated summaries produced no change in performance metrics. AI summaries and AI highlighting together improved efficiency but not as much as AI highlighting alone. Our results show that AI support can dramatically increase the efficiency of legal task completion, but finding the optimal form of AI assistance is a fine-tuning exercise. Currently, AI-generated highlighting is not readily available from state-of-the-art, consumer-facing large language models, but our work suggests that this capability should be prioritized in the development of legal AI products.

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来源期刊
CiteScore
2.30
自引率
11.80%
发文量
34
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