UniICL: Systematizing Unified Multimodal In-context Learning through a Capability-Oriented Taxonomy
Abstract
In-context Learning enables training-free adaptation via demonstrations but remains highly sensitive to example selection and formatting. In unified multimodal models spanning understanding and generation, this sensitivity is exacerbated by cross-modal interference and varying cognitive demands. Consequently, In-context Learning efficacy is often non-monotonic and highly task-dependent. To diagnose these behaviors, we introduce a six-level capability-oriented taxonomy that categorizes the functional role of demonstrations from basic perception to high-order discernment. Guided by this cognitive framework, we construct UniICL-760K, a large-scale corpus featuring curated 8-shot In-context Learning episodes across 15 subtasks, alongside UniICL-Bench for rigorous, controlled evaluation. As an architectural intervention to stabilize few-shot adaptation, we propose the Context-Adaptive Prototype Modulator, a lightweight, plug-and-play module. Evaluations on UniICL-Bench show that our approach yields highly competitive unified results, outperforming larger-parameter multimodal large language model baselines on most understanding In-context Learning tasks. Data and code will be available soon at https://github.com/xuyicheng-zju/UniICL.
Cite
@article{arxiv.2603.24690,
title = {UniICL: Systematizing Unified Multimodal In-context Learning through a Capability-Oriented Taxonomy},
author = {Yicheng Xu and Jiangning Zhang and Zhucun Xue and Teng Hu and Ran Yi and Xiaobin Hu and Yong Liu and Dacheng Tao},
journal= {arXiv preprint arXiv:2603.24690},
year = {2026}
}
Comments
ECCV2026 under review