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arxiv: 2505.23121 · v2 · pith:TY3LLDH2 · submitted 2025-05-29 · cs.CL · cs.AI

ContextQFormer: A New Context Modeling Method for Multi-Turn Multi-Modal Conversations

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classification cs.CL cs.AI
keywords multi-modalcontextqformermulti-turndialoguetmdialogbaselinescomparedcontext
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Multi-modal large language models have demonstrated remarkable zero-shot abilities and powerful image-understanding capabilities. However, the existing open-source multi-modal models suffer from the weak capability of multi-turn interaction, especially for long contexts. To address the issue, we first introduce a context modeling module, termed ContextQFormer, which utilizes a memory block to enhance the presentation of contextual information. Furthermore, to facilitate further research, we carefully build a new multi-turn multi-modal dialogue dataset (TMDialog) for pre-training, instruction-tuning, and evaluation, which will be open-sourced lately. Compared with other multi-modal dialogue datasets, TMDialog contains longer conversations, which supports the research of multi-turn multi-modal dialogue. In addition, ContextQFormer is compared with three baselines on TMDialog and experimental results illustrate that ContextQFormer achieves an improvement of 2%-4% in available rate over baselines.

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Cited by 1 Pith paper

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