2021
DOI: 10.48550/arxiv.2111.12614
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PSSL: Self-supervised Learning for Personalized Search with Contrastive Sampling

Abstract: Personalized search plays a crucial role in improving user search experience owing to its ability to build user profiles based on historical behaviors. Previous studies have made great progress in extracting personal signals from the query log and learning user representations. However, neural personalized search is extremely dependent on sufficient data to train the user model. Data sparsity is an inevitable challenge for existing methods to learn high-quality user representations. Moreover, the overemphasis … Show more

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