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UniConv: Unifying Retrieval and Response Generation for Large Language Models in Conversations

About

The rapid advancement of conversational search systems revolutionizes how information is accessed by enabling the multi-turn interaction between the user and the system. Existing conversational search systems are usually built with two different models. This separation restricts the system from leveraging the intrinsic knowledge of the models simultaneously, which cannot ensure the effectiveness of retrieval benefiting the generation. The existing studies for developing unified models cannot fully address the aspects of understanding conversational context, managing retrieval independently, and generating responses. In this paper, we explore how to unify dense retrieval and response generation for large language models in conversation. We conduct joint fine-tuning with different objectives and design two mechanisms to reduce the inconsistency risks while mitigating data discrepancy. The evaluations on five conversational search datasets demonstrate that our unified model can mutually improve both tasks and outperform the existing baselines.

Fengran Mo, Yifan Gao, Chuan Meng, Xin Liu, Zhuofeng Wu, Kelong Mao, Zhengyang Wang, Pei Chen, Zheng Li, Xian Li, Bing Yin, Meng Jiang• 2025

Related benchmarks

TaskDatasetResultRank
Conversational RetrievalQReCC (test)
Recall@1068.9
43
Conversational RetrievalTopiOCQA (test)
NDCG@30.426
26
Answer GenerationTopiOCQA
F1 Score29.6
17
Answer GenerationInscit
F1 Score33.2
16
Answer GenerationQReCC
F1 Score26.2
16
Answer GenerationCORAL
F124.3
13
Conversational Response GenerationTopiOCQA (test)
F1 Score0.296
10
Conversational Response GenerationQReCC (test)
F1 Score26.2
10
Conversational Response GenerationINSCIT (test)
F1 Score33.2
9
Conversational Response GenerationOR-QUAC (test)
F1 Score17.8
9
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