使用生成代理为调查数据报告创建提示表

Joris Veerbeek, Nicholas Diakopoulos
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引用次数: 0

摘要

本文介绍了一种使用生成式人工智能代理为调查性数据报告创建提示表的系统。我们的系统采用了三个专业代理--一名分析师、一名记者和一名编辑--协作生成和提炼来自数据集的提示。我们使用真实世界的调查报道验证了这种方法,结果表明,与没有代理的基线模型相比,我们基于代理的系统通常能生成更多有新闻价值的准确见解,尽管不同报道之间存在一些差异。
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Using Generative Agents to Create Tip Sheets for Investigative Data Reporting
This paper introduces a system using generative AI agents to create tip sheets for investigative data reporting. Our system employs three specialized agents--an analyst, a reporter, and an editor--to collaboratively generate and refine tips from datasets. We validate this approach using real-world investigative stories, demonstrating that our agent-based system generally generates more newsworthy and accurate insights compared to a baseline model without agents, although some variability was noted between different stories. Our findings highlight the potential of generative AI to provide leads for investigative data reporting.
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