🤗 Upvotes: 24 | cs.IR
Authors:
Paul Teiletche, Quentin Macé, Max Conti, Antonio Loison, Gautier Viaud, Pierre Colombo, Manuel Faysse
Title:
ModernVBERT: Towards Smaller Visual Document Retrievers
Arxiv:
http://arxiv.org/abs/2510.01149v1
Abstract:
Multimodal embedding models are gaining prevalence, notably for document retrieval as efficient alternatives to text-only pipelines. These models are typically built by finetuning large vision-language decoders (VLMs) with contrastive losses on text-image pairs. In this work, we show that, while cost-efficient, this repurposing approach often bottlenecks retrieval performance. Through controlled experiments, we establish a principled recipe for improving visual document retrieval models. We notably measure the impact of attention masking, image resolution, modality alignment data regimes, and late interaction centered contrastive objectives which emerge as central performance factors. Building on these insights, we release ModernVBERT, a compact 250M-parameter vision-language encoder that outperforms models up to 10 times larger when finetuned on document retrieval tasks. Models and code are made available at https://huggingface.co/ModernVBERT.
信息
- 节目
- 频率一日一更
- 发布时间2025年10月4日 UTC 03:41
- 长度23 分钟
- 单集1223
- 分级儿童适宜