2015
DOI: 10.1117/12.2229516
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A scalable and practical one-pass clustering algorithm for recommender system

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“…Recommender systems can compute recommendations either offline/batch or online. Offline/batch recommender systems use a data set that contains the description of items and the user's history to build a model that is used for recommendations (239). On the other hand, online recommender systems do not require training for new items or users, because online recommender systems only consider the current context of users for recommendations.…”
Section: Thread Recommendermentioning
confidence: 99%
“…Recommender systems can compute recommendations either offline/batch or online. Offline/batch recommender systems use a data set that contains the description of items and the user's history to build a model that is used for recommendations (239). On the other hand, online recommender systems do not require training for new items or users, because online recommender systems only consider the current context of users for recommendations.…”
Section: Thread Recommendermentioning
confidence: 99%