Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Few-Shot Conversational Dense Retrieval

About

Dense retrieval (DR) has the potential to resolve the query understanding challenge in conversational search by matching in the learned embedding space. However, this adaptation is challenging due to DR models' extra needs for supervision signals and the long-tail nature of conversational search. In this paper, we present a Conversational Dense Retrieval system, ConvDR, that learns contextualized embeddings for multi-turn conversational queries and retrieves documents solely using embedding dot products. In addition, we grant ConvDR few-shot ability using a teacher-student framework, where we employ an ad hoc dense retriever as the teacher, inherit its document encodings, and learn a student query encoder to mimic the teacher embeddings on oracle reformulated queries. Our experiments on TREC CAsT and OR-QuAC demonstrate ConvDR's effectiveness in both few-shot and fully-supervised settings. It outperforms previous systems that operate in the sparse word space, matches the retrieval accuracy of oracle query reformulations, and is also more efficient thanks to its simplicity. Our analyses reveal that the advantages of ConvDR come from its ability to capture informative context while ignoring the unrelated context in previous conversation rounds. This makes ConvDR more effective as conversations evolve while previous systems may get confused by the increased noise from previous turns. Our code is publicly available at https://github.com/thunlp/ConvDR.

Shi Yu, Zhenghao Liu, Chenyan Xiong, Tao Feng, Zhiyuan Liu• 2021

Related benchmarks

TaskDatasetResultRank
Conversational RetrievalQReCC (test)
Recall@1058.2
43
Conversational RetrievalTopiOCQA (test)
NDCG@30.264
26
Conversational Search RetrievalTopiOCQA (test)
MRR27.2
21
Conversational SearchCAsT 20
MRR50.1
14
Conversational SearchCAsT 19
MRR74
14
Showing 5 of 5 rows

Other info

Follow for update