Multi-agent Systems for Misinformation Lifecycle : Detection, Correction And Source Identification
Aditya Gautam

TL;DR
This paper presents a multi-agent framework that manages the entire misinformation lifecycle, including detection, correction, and source verification, improving transparency, scalability, and adaptability over traditional single-agent systems.
Contribution
It introduces a novel multi-agent architecture with specialized agents for each misinformation task, enhancing modularity, explainability, and robustness compared to existing methods.
Findings
Framework covers detection, correction, and source verification.
Agents can be individually evaluated and optimized.
Enhances scalability and transparency in misinformation management.
Abstract
The rapid proliferation of misinformation in digital media demands solutions that go beyond isolated Large Language Model(LLM) or AI Agent based detection methods. This paper introduces a novel multi-agent framework that covers the complete misinformation lifecycle: classification, detection, correction, and source verification to deliver more transparent and reliable outcomes. In contrast to single-agent or monolithic architectures, our approach employs five specialized agents: an Indexer agent for dynamically maintaining trusted repositories, a Classifier agent for labeling misinformation types, an Extractor agent for evidence based retrieval and ranking, a Corrector agent for generating fact-based correction and a Verification agent for validating outputs and tracking source credibility. Each agent can be individually evaluated and optimized, ensuring scalability and adaptability as…
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