2016 IEEE 23rd International Conference on High Performance Computing Workshops (HiPCW) 2016
DOI: 10.1109/hipcw.2016.013
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A Hybrid Recommender System Using Weighted Ensemble Similarity Metrics and Digital Filters

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Cited by 9 publications
(2 citation statements)
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“…This metric is superior to PIP in terms of performance and computation time. Laveti et al [33] proposed a weighted hybrid ensemble similarity metric combining two or more conventional approaches that demonstrates an improvement in recommendation accuracy; however, it relies on a high number of rating samples and neighbors to achieve high performance. Guo et al [27] defined a Bayesian similarity measure based on the Dirichlet distribution that considers the direction and length of the rating vectors while also considering the rating semantics of all rating pairs.…”
Section: B Similarity Measuresmentioning
confidence: 99%
“…This metric is superior to PIP in terms of performance and computation time. Laveti et al [33] proposed a weighted hybrid ensemble similarity metric combining two or more conventional approaches that demonstrates an improvement in recommendation accuracy; however, it relies on a high number of rating samples and neighbors to achieve high performance. Guo et al [27] defined a Bayesian similarity measure based on the Dirichlet distribution that considers the direction and length of the rating vectors while also considering the rating semantics of all rating pairs.…”
Section: B Similarity Measuresmentioning
confidence: 99%
“…The rating toward item is the most used criterion for item selection [12,13]. However, most studies use only a comprehensive score, which results in a serious loss of information [14,15]. In recent years, with the development of text analysis technology, several researches have combined ratings and online reviews to select items [16,17].…”
Section: Introductionmentioning
confidence: 99%