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Empirical Study of User Preferences Based on Rating Data of MoviesMapReduce Based Personalized Locality Sensitive Hashing for Similarity Joins on Large Scale DataPredicting potential drug-drug interactions by integrating chemical, biological, phenotypic and network dataConstructing a biodiversity terminological inventory.Item Anomaly Detection Based on Dynamic Partition for Time Series in Recommender Systems.Latent geometry of bipartite networks.Towards reproducibility in recommender-systems researchEducational recommender systems and their application in lifelong learningRecommender system with grey wolf optimizer and FCMMovie recommender system with metaheuristic artificial beeEfficient music recommender system using context graph and particle swarmAn effective web page recommender system with fuzzy c-mean clusteringA collaborative recommender system enhanced with particle swarm optimization techniqueCollaborative Filtering with Semantic Neighbour DiscoveryA Semantic Recommender System for iDTV Based on Educational CompetenciesContext-aware media recommendations for smart devicesEvolutionary computing in recommender systems: a review of recent researchRecommending Collaborative Filtering Algorithms Using Subsampling LandmarkersSelecting Collaborative Filtering Algorithms Using MetalearningColleague recommender system in the Expert Cloud using features matrixAre Scientific Data Repositories Coping with Research Data Publishing?Playlist Generation via Vector Representation of SongsA Fast Recommender System for Cold User Using Categorized ItemsA survey on concept drift adaptationComparing social factors affecting recommender decisions in online and educational social networkAggregated recommendation through random forestsA Review of the Role of Sensors in Mobile Context-Aware Recommendation SystemsA Hybrid Recommender System Based on User-Recommender InteractionEffect of Collaborative Recommender System Parameters: Common Set Cardinality and the Similarity MeasureA language modeling approach for the recommendation of tourism-related services
P2860
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P2860
description
wetenschappelijk artikel
@nl
наукова стаття, опублікована в липні 2013
@uk
name
Recommender systems survey
@en
Recommender systems survey
@nl
type
label
Recommender systems survey
@en
Recommender systems survey
@nl
prefLabel
Recommender systems survey
@en
Recommender systems survey
@nl
P2093
P1476
Recommender systems survey
@en
P2093
A. Gutiérrez
A. Hernando
J. Bobadilla
P304
P356
10.1016/J.KNOSYS.2013.03.012
P577
2013-07-01T00:00:00Z