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Main Authors: Avram, Alexandru-Andrei, Groza, Adrian, Lecu, Alexandru
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.10143
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author Avram, Alexandru-Andrei
Groza, Adrian
Lecu, Alexandru
author_facet Avram, Alexandru-Andrei
Groza, Adrian
Lecu, Alexandru
contents The large spread of disinformation across digital platforms creates significant challenges to information integrity. This paper presents a multi-agent system that uses relation extraction to detect disinformation in news articles, focusing on titles and short text snippets. The proposed Agentic AI system combines four agents: (i) a machine learning agent (logistic regression), (ii) a Wikipedia knowledge check agent (which relies on named entity recognition), (iii) a coherence detection agent (using LLM prompt engineering), and (iv) a web-scraped data analyzer that extracts relational triplets for fact checking. The system is orchestrated via the Model Context Protocol (MCP), offering shared context and live learning across components. Results demonstrate that the multi-agent ensemble achieves 95.3% accuracy with an F1 score of 0.964, significantly outperforming individual agents and traditional approaches. The weighted aggregation method, mathematically derived from individual agent misclassification rates, proves superior to algorithmic threshold optimization. The modular architecture makes the system easily scalable, while also maintaining details of the decision processes.
format Preprint
id arxiv_https___arxiv_org_abs_2508_10143
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MCP-Orchestrated Multi-Agent System for Automated Disinformation Detection
Avram, Alexandru-Andrei
Groza, Adrian
Lecu, Alexandru
Artificial Intelligence
The large spread of disinformation across digital platforms creates significant challenges to information integrity. This paper presents a multi-agent system that uses relation extraction to detect disinformation in news articles, focusing on titles and short text snippets. The proposed Agentic AI system combines four agents: (i) a machine learning agent (logistic regression), (ii) a Wikipedia knowledge check agent (which relies on named entity recognition), (iii) a coherence detection agent (using LLM prompt engineering), and (iv) a web-scraped data analyzer that extracts relational triplets for fact checking. The system is orchestrated via the Model Context Protocol (MCP), offering shared context and live learning across components. Results demonstrate that the multi-agent ensemble achieves 95.3% accuracy with an F1 score of 0.964, significantly outperforming individual agents and traditional approaches. The weighted aggregation method, mathematically derived from individual agent misclassification rates, proves superior to algorithmic threshold optimization. The modular architecture makes the system easily scalable, while also maintaining details of the decision processes.
title MCP-Orchestrated Multi-Agent System for Automated Disinformation Detection
topic Artificial Intelligence
url https://arxiv.org/abs/2508.10143