TL;DR
This paper presents RAMM, a retrieval-augmented multimodal model that improves fake news detection by capturing cross-instance narrative consistency and incorporating domain-specific reasoning.
Contribution
The novel RAMM model combines a multimodal language backbone with modules for narrative alignment and human-like reasoning, addressing key challenges in fake news detection.
Findings
RAMM outperforms existing models on three public datasets.
The narrative alignment module effectively captures cross-instance consistency.
Semantic alignment enhances reasoning interpretability.
Abstract
In recent years, multimodal multidomain fake news detection has garnered increasing attention. Nevertheless, this direction presents two significant challenges: (1) Failure to Capture Cross-Instance Narrative Consistency: existing models usually evaluate each news in isolation, fail to capture cross-instance narrative consistency, and thus struggle to address the spread of cluster based fake news driven by social media; (2) Lack of Domain Specific Knowledge for Reasoning: conventional models, which rely solely on knowledge encoded in their parameters during training, struggle to generalize to new or data-scarce domains (e.g., emerging events or niche topics). To tackle these challenges, we introduce Retrieval-Augmented Multimodal Model for Fake News Detection (RAMM). First, RAMM employs a Multimodal Large Language Model (MLLM) as its backbone to capture cross-modal semantic information…
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