用于查询解析和分析的多智能体行为批判生成人工智能

Mohammad Wali Ur Rahman;Ric Nevarez;Lamia Tasnim Mim;Salim Hariri
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引用次数: 0

摘要

在本文中,我们介绍了多智能体策略查询解决和诊断工具(MASQRAD),这是一个基于行动者-评论家模型的查询解决变革框架,它利用了多个生成式AI智能体。MASQRAD擅长将不精确或模糊的用户查询转换为精确且可操作的请求。该框架生成相关的可视化和对这些重点查询的响应,以及为用户提供彻底的分析和深刻的解释。MASQRAD解决了需要快速和精确数据解释的领域中现有解决方案的共同缺点,例如它们无法成功地应用AI来生成可操作的见解,以及它们与用户查询固有的模糊性有关的挑战。MASQRAD作为一个复杂的多智能体系统,但在用户面前“伪装”成一个单一的人工智能实体,从而降低了错误,增强了数据交互。这种方法使用了三种主要的AI代理:演员生成AI、评论家生成AI和专家分析生成AI。每一个都是创建、增强和评估数据交互的关键。Actor AI生成Python脚本,在操作约束下从大型数据集生成数据可视化,而Critic AI通过多智能体辩论严格细化这些脚本。最后,专家分析AI将结果置于环境中以帮助决策。在处理与自然语言可视化相关的任务时,MASQRAD的准确率达到87%,为自动数据解释建立了新的基准,并展示了一个值得注意的进步,有可能彻底改变人工智能驱动的应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiagent Actor-Critic Generative AI for Query Resolution and Analysis
In this article, we introduce multiagent strategic query resolution and diagnostic tool (MASQRAD), a transformative framework for query resolution based on the actor-critic model, which utilizes multiple generative AI agents. MASQRAD is excellent at translating imprecise or ambiguous user inquiries into precise and actionable requests. This framework generates pertinent visualizations and responses to these focused queries, as well as thorough analyses and insightful interpretations for users. MASQRAD addresses the common shortcomings of existing solutions in domains that demand fast and precise data interpretation, such as their incapacity to successfully apply AI for generating actionable insights and their challenges with the inherent ambiguity of user queries. MASQRAD functions as a sophisticated multiagent system but “masquerades” to users as a single AI entity, which lowers errors and enhances data interaction. This approach makes use of three primary AI agents: Actor Generative AI, Critic Generative AI, and Expert Analysis Generative AI. Each is crucial for creating, enhancing, and evaluating data interactions. The Actor AI generates Python scripts to generate data visualizations from large datasets within operational constraints, and the Critic AI rigorously refines these scripts through multiagent debate. Finally, the Expert Analysis AI contextualizes the outcomes to aid in decision-making. With an accuracy rate of 87% when handling tasks related to natural language visualization, MASQRAD establishes new benchmarks for automated data interpretation and showcases a noteworthy advancement that has the potential to revolutionize AI-driven applications.
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CiteScore
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