Publication | Closed Access
Cross-Batch Negative Sampling for Training Two-Tower Recommenders
37
Citations
31
References
2021
Year
Unknown Venue
Natural Language ProcessingLarge Ai ModelRetrieval Augmented GenerationGroup RecommendersCross-batch Negative SamplingInformation RetrievalMachine LearningData MiningData ScienceTwo-tower ModelsEngineeringKnowledge DiscoveryCold-start ProblemComputer ScienceDeep LearningTwo-tower ArchitectureCollaborative FilteringWord Embeddings
The two-tower architecture has been widely applied for learning item and user representations, which is important for large-scale recommender systems. Many two-tower models are trained using various in-batch negative sampling strategies, where the effects of such strategies inherently rely on the size of mini-batches. However, training two-tower models with a large batch size is inefficient, as it demands a large volume of memory for item and user contents and consumes a lot of time for feature encoding. Interestingly, we find that neural encoders can output relatively stable features for the same input after warming up in the training process. Based on such facts, we propose a simple yet effective sampling strategy called Cross-Batch Negative Sampling (CBNS), which takes advantage of the encoded item embeddings from recent mini-batches to boost the model training. Both theoretical analysis and empirical evaluations demonstrate the effectiveness and the efficiency of CBNS.
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