English

Multi-Turn Multi-Modal Question Clarification for Enhanced Conversational Understanding

Information Retrieval 2025-02-18 v1 Artificial Intelligence Computation and Language Machine Learning

Abstract

Conversational query clarification enables users to refine their search queries through interactive dialogue, improving search effectiveness. Traditional approaches rely on text-based clarifying questions, which often fail to capture complex user preferences, particularly those involving visual attributes. While recent work has explored single-turn multi-modal clarification with images alongside text, such methods do not fully support the progressive nature of user intent refinement over multiple turns. Motivated by this, we introduce the Multi-turn Multi-modal Clarifying Questions (MMCQ) task, which combines text and visual modalities to refine user queries in a multi-turn conversation. To facilitate this task, we create a large-scale dataset named ClariMM comprising over 13k multi-turn interactions and 33k question-answer pairs containing multi-modal clarifying questions. We propose Mario, a retrieval framework that employs a two-phase ranking strategy: initial retrieval with BM25, followed by a multi-modal generative re-ranking model that integrates textual and visual information from conversational history. Our experiments show that multi-turn multi-modal clarification outperforms uni-modal and single-turn approaches, improving MRR by 12.88%. The gains are most significant in longer interactions, demonstrating the value of progressive refinement for complex queries.

Keywords

Cite

@article{arxiv.2502.11442,
  title  = {Multi-Turn Multi-Modal Question Clarification for Enhanced Conversational Understanding},
  author = {Kimia Ramezan and Alireza Amiri Bavandpour and Yifei Yuan and Clemencia Siro and Mohammad Aliannejadi},
  journal= {arXiv preprint arXiv:2502.11442},
  year   = {2025}
}
R2 v1 2026-06-28T21:46:36.300Z