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Your search keyword '"RECOMMENDER systems"' showing total 15 results
15 results on '"RECOMMENDER systems"'

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1. Neural Embedding Singular Value Decomposition for Collaborative Filtering.

2. Supervised Learning for Nonsequential Data: A Canonical Polyadic Decomposition Approach.

3. Multi-Task Learning for Recommendation Over Heterogeneous Information Network.

4. Assimilating Second-Order Information for Building Non-Negative Latent Factor Analysis-Based Recommenders.

5. Graph Ranking Auditing: Problem Definition and Fast Solutions.

6. Learning to Recommend With Multiple Cascading Behaviors.

7. Latent Factor-Based Recommenders Relying on Extended Stochastic Gradient Descent Algorithms.

8. PRIMA++: A Probabilistic Framework for User Choice Modelling With Small Data.

9. Geometric Matrix Completion With Deep Conditional Random Fields.

10. Fast Matrix Factorization With Nonuniform Weights on Missing Data.

11. NAIS: Neural Attentive Item Similarity Model for Recommendation.

12. Modeling the Heterogeneous Duration of User Interest in Time-Dependent Recommendation: A Hidden Semi-Markov Approach.

13. Online Categorical Subspace Learning for Sketching Big Data with Misses.

14. A Novel Recommendation Model Regularized with User Trust and Item Ratings.

15. Predicting Student Performance Using Personalized Analytics.

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