2019
DOI: 10.1109/access.2018.2890079
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A New Recommendation Approach Based on Probabilistic Soft Clustering Methods: A Scientific Documentation Case Study

Abstract: Recommender system (RS) clustering is an important issue, both for the improvement of the collaborative filtering (CF) accuracy and to obtain analytical information from their high sparse datasets. RS items and users usually share features belonging to different clusters, e.g., a musical-comedy movie. Soft clustering, therefore, is the CF clustering's most natural approach. In this paper, we propose a new prediction approach for probabilistic soft clustering methods. In addition, we put to test a not tradition… Show more

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Cited by 7 publications
(4 citation statements)
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References 49 publications
(93 reference statements)
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“…Considering the influence of subjective user ratings on recommendation results, document [17] took into account that the Quality of Service (QoS) incorporated the contribution of unreliable users and used a clustering algorithm and the collaborative filtering method integrating the degree of trust to rebuild the trust network of clustered users and make personalized QoS predictions and cloud service recommendations for active users. In document [18], users had subjective preferences for various project categories, which meant that the deviation of the original data may be amplified or reversed by the potential recommendation algorithms. Appropriate recommendation methods were selected by comparing different algorithms reflecting the sorting quality and deviation.…”
Section: Related Workmentioning
confidence: 99%
“…Considering the influence of subjective user ratings on recommendation results, document [17] took into account that the Quality of Service (QoS) incorporated the contribution of unreliable users and used a clustering algorithm and the collaborative filtering method integrating the degree of trust to rebuild the trust network of clustered users and make personalized QoS predictions and cloud service recommendations for active users. In document [18], users had subjective preferences for various project categories, which meant that the deviation of the original data may be amplified or reversed by the potential recommendation algorithms. Appropriate recommendation methods were selected by comparing different algorithms reflecting the sorting quality and deviation.…”
Section: Related Workmentioning
confidence: 99%
“…RS suggest to the users about the items they probably will like. Depending on the item nature, a variety of RS can be implemented: e-learning [2], tourism [3], [4], films [5], restaurants [6], networks [7], healthcare [8], industrial operators [9], etc. The most accurate type of RS is the Collaborative Filtering (CF) one [10], [11].…”
Section: A Recommendations To Individual Usersmentioning
confidence: 99%
“…Homogeneous groups are particularly relevant for marketing processes, where companies want to recommend products or services to a broad target of similar users. Homogeneous groups are usually obtained by using non-supervised machine learning methods, such as diverse clustering approaches [5].…”
Section: Recommendation To Groups Of Users and Proposed Approachmentioning
confidence: 99%
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