Litcius/Paper detail

In-Batch Negatives for Knowledge Distillation with Tightly-Coupled Teachers for Dense Retrieval

Sheng-Chieh Lin, Jheng-Hong Yang, Jimmy Lin

2021119 citationsDOIOpen Access PDF

Abstract

We present an efficient training approach to text retrieval with dense representations that applies knowledge distillation using the ColBERT late-interaction ranking model. Specifically, we propose to transfer the knowledge from a bi-encoder teacher to a student by distilling knowledge from ColBERT’s expressive MaxSim operator into a simple dot product. The advantage of the bi-encoder teacher–student setup is that we can efficiently add in-batch negatives during knowledge distillation, enabling richer interactions between teacher and student models. In addition, using ColBERT as the teacher reduces training cost compared to a full cross-encoder. Experiments on the MS MARCO passage and document ranking tasks and data from the TREC 2019 Deep Learning Track demonstrate that our approach helps models learn robust representations for dense retrieval effectively and efficiently.

Topics & Concepts

EncoderComputer scienceDistillationRanking (information retrieval)Artificial intelligenceKnowledge transferLearning to rankInformation retrievalMachine learningKnowledge managementChemistryOperating systemOrganic chemistryTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications
In-Batch Negatives for Knowledge Distillation with Tightly-Coupled Teachers for Dense Retrieval | Litcius