2022
DOI: 10.48550/arxiv.2203.03982
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Predictive and Contrastive: Dual-Auxiliary Learning for Recommendation

Abstract: Self-supervised learning (SSL) recently has achieved outstanding success on recommendation. By setting up an auxiliary task (either predictive or contrastive), SSL can discover supervisory signals from the raw data without human annotation, which greatly mitigates the problem of sparse user-item interactions. However, most SSL-based recommendation models rely on general-purpose auxiliary tasks, e.g., maximizing correspondence between node representations learned from the original and perturbed interaction grap… Show more

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References 27 publications
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