MM-WebAgent: A Hierarchical Multimodal Web Agent for Webpage Generation
- Yan Li ,
- Zezi Zeng ,
- Yifan Yang ,
- Yuqing Yang ,
- Ning Liao ,
- Weiwei Guo ,
- Lili Qiu ,
- Mingxi Cheng ,
- Qiuchao Dai ,
- Zhendong Wang ,
- Zhengyuan Yang ,
- Xue Yang ,
- Ji Li ,
- Lijuan Wang ,
- Chong Luo
arXiv
The rapid progress of Artificial Intelligence Generated Content (AIGC) tools enables images, videos, and visualizations to be created on demand for webpage design, offering a flexible and increasingly adopted paradigm for modern UI/UX. However, directly integrating such tools into automated webpage generation often leads to style inconsistency and poor global coherence, as elements are generated in isolation. We propose MM-WebAgent, a hierarchical agentic framework for multimodal webpage generation that coordinates AIGC-based element generation through hierarchical planning and iterative self-reflection. MM-WebAgent jointly optimizes global layout, local multimodal content, and their integration, producing coherent and visually consistent webpages. We further introduce a benchmark for multimodal webpage generation and a multi-level evaluation protocol for systematic assessment. Experiments demonstrate that MM-WebAgent outperforms code-generation and agent-based baselines, especially on multimodal element generation and integration. Code&Data: https://aka.ms/mm-webagent.