The Wisdom of Agent Crowds: A Human-AI Interaction Innovation Ignition Framework
Senhao Yang, Qiwen Cheng, Ruiqi Ma, Liangzhe Zhao, Zhenying Wu, Guangqiang Yu

TL;DR
This paper introduces a human-AI collaborative multi-agent framework for financial analysis, enhancing decision-making efficiency and user experience through structured summaries, interactive modules, and integrated large models.
Contribution
It presents a novel multi-agent system based on BDI theory that combines human input with AI models for improved financial decision-making.
Findings
System improves efficiency of human-AI interaction.
Enhances quality of financial decision-making.
Achieves high usability and user satisfaction.
Abstract
With the widespread application of large AI models in various fields, the automation level of multi-agent systems has been continuously improved. However, in high-risk decision-making scenarios such as healthcare and finance, human participation and the alignment of intelligent systems with human intentions remain crucial. This paper focuses on the financial scenario and constructs a multi-agent brainstorming framework based on the BDI theory. A human-computer collaborative multi-agent financial analysis process is built using Streamlit. The system plans tasks according to user intentions, reduces users' cognitive load through real-time updated structured text summaries and the interactive Cothinker module, and reasonably integrates general and reasoning large models to enhance the ability to handle complex problems. By designing a quantitative analysis algorithm for the sentiment…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · AI in Service Interactions · Expert finding and Q&A systems
