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Curriculum Learning for Dense Retrieval Distillation

Hansi Zeng, Hamed Zamani, Vishwa Vinay

2022Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval38 citationsDOI

Abstract

Recent work has shown that more effective dense retrieval models can be obtained by distilling ranking knowledge from an existing base re-ranking model. In this paper, we propose a generic curriculum learning based optimization framework called CL-DRD that controls the difficulty level of training data produced by the re-ranking (teacher) model. CL-DRD iteratively optimizes the dense retrieval (student) model by increasing the difficulty of the knowledge distillation data made available to it. In more detail, we initially provide the student model coarse-grained preference pairs between documents in the teacher's ranking, and progressively move towards finer-grained pairwise document ordering requirements. In our experiments, we apply a simple implementation of the CL-DRD framework to enhance two state-of-the-art dense retrieval models. Experiments on three public passage retrieval datasets demonstrate the effectiveness of our proposed framework.

Topics & Concepts

Ranking (information retrieval)Pairwise comparisonComputer scienceDistillationPreferenceCurriculumInformation retrievalSimple (philosophy)Artificial intelligenceMachine learningMathematicsChemistryStatisticsPedagogyOrganic chemistryPhilosophyPsychologyEpistemologyTopic ModelingDomain Adaptation and Few-Shot LearningInformation Retrieval and Search Behavior
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