Barlow Twins for Sequential Recommendation
- URL: http://arxiv.org/abs/2510.26407v1
- Date: Thu, 30 Oct 2025 11:56:02 GMT
- Title: Barlow Twins for Sequential Recommendation
- Authors: Ivan Razvorotnev, Marina Munkhoeva, Evgeny Frolov,
- Abstract summary: Sequential recommendation models must navigate sparse interaction data popularity bias and conflicting objectives like accuracy versus diversity.<n>We introduce BT-SR a novel noncontrastive SSL framework that integrates the Barlow Twins redundancy principle into a Transformerbased nextitem recommender.
- Score: 3.066878488495023
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Sequential recommendation models must navigate sparse interaction data popularity bias and conflicting objectives like accuracy versus diversity While recent contrastive selfsupervised learning SSL methods offer improved accuracy they come with tradeoffs large batch requirements reliance on handcrafted augmentations and negative sampling that can reinforce popularity bias In this paper we introduce BT-SR a novel noncontrastive SSL framework that integrates the Barlow Twins redundancyreduction principle into a Transformerbased nextitem recommender BTSR learns embeddings that align users with similar shortterm behaviors while preserving longterm distinctionswithout requiring negative sampling or artificial perturbations This structuresensitive alignment allows BT-SR to more effectively recognize emerging user intent and mitigate the influence of noisy historical context Our experiments on five public benchmarks demonstrate that BTSR consistently improves nextitem prediction accuracy and significantly enhances longtail item coverage and recommendation calibration Crucially we show that a single hyperparameter can control the accuracydiversity tradeoff enabling practitioners to adapt recommendations to specific application needs
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