2021
DOI: 10.48550/arxiv.2106.14388
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Intent Disentanglement and Feature Self-supervision for Novel Recommendation

Abstract: One key property in recommender systems is the long-tail distribution in user-item interactions where most items only have few user feedback. Improving the recommendation of tail items can promote novelty and bring positive effects to both users and providers, and thus is a desirable property of recommender systems. Current novel recommendation studies over-emphasize the importance of tail items without differentiating the degree of users' intent on popularity and often incur a sharp decline of accuracy. Moreo… Show more

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Cited by 1 publication
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“…The authors aim to disentangle and learn latent factors that influence a user to share a news article by leveraging a neighborhood routing algorithm [16]. The authors of [28] proposed a model to disentangling user and item latent representations for better recommendations. The user representations are disentangled into conformity influence and personal interest factors to improve recommendations of long-tail items.…”
Section: Related Workmentioning
confidence: 99%
“…The authors aim to disentangle and learn latent factors that influence a user to share a news article by leveraging a neighborhood routing algorithm [16]. The authors of [28] proposed a model to disentangling user and item latent representations for better recommendations. The user representations are disentangled into conformity influence and personal interest factors to improve recommendations of long-tail items.…”
Section: Related Workmentioning
confidence: 99%