AI RESEARCH

MultiPress: A Multi-Agent Framework for Interpretable Multimodal News Classification

arXiv CS.CL

ArXi:2604.03586v1 Announce Type: new With the growing prevalence of multimodal news content, effective news topic classification demands models capable of jointly understanding and reasoning over heterogeneous data such as text and images. Existing methods often process modalities independently or employ simplistic fusion strategies, limiting their ability to capture complex cross-modal interactions and leverage external knowledge. To overcome these limitations, we propose MultiPress, a novel three-stage multi-agent framework for multimodal news classification.