Neural personalized ranking for image recommendation

W Niu, J Caverlee, H Lu - Proceedings of the eleventh ACM international …, 2018 - dl.acm.org
Proceedings of the eleventh ACM international conference on web search and …, 2018dl.acm.org
We propose a new model toward improving the quality of image recommendations in social
sharing communities like Pinterest, Flickr, and Instagram. Concretely, we propose Neural
Personalized Ranking (NPR)--a personalized pairwise ranking model over implicit feedback
datasets--that is inspired by Bayesian Personalized Ranking (BPR) and recent advances in
neural networks. We further build an enhanced model by augmenting the basic NPR model
with multiple contextual preference clues including user tags, geographic features, and …
We propose a new model toward improving the quality of image recommendations in social sharing communities like Pinterest, Flickr, and Instagram. Concretely, we propose Neural Personalized Ranking (NPR) -- a personalized pairwise ranking model over implicit feedback datasets -- that is inspired by Bayesian Personalized Ranking (BPR) and recent advances in neural networks. We further build an enhanced model by augmenting the basic NPR model with multiple contextual preference clues including user tags, geographic features, and visual factors. In our experiments over the Flickr YFCC100M dataset, we demonstrate the proposed NPR model is more effective than multiple baselines. Moreover, the contextual enhanced NPR model significantly outperforms the base model by 16.6% and a contextual enhanced BPR model by 4.5% in precision and recall.
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