2020
DOI: 10.1007/s10618-020-00708-6
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Simple and effective neural-free soft-cluster embeddings for item cold-start recommendations

Abstract: Recommender systems are widely used in online platforms for easy exploration of personalized content. The best available recommendation algorithms are based on using the observed preference information among collaborating entities. A significant challenge in recommender system continues to be item cold-start recommendation: how to effectively recommend items with no observed or past preference information. Here we propose a two-stage algorithm based on soft clustering to provide an efficient solution to this p… Show more

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Cited by 9 publications
(1 citation statement)
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“…Research efforts are still required to better investigate the incorporation of this rich metadata into CF-based RSs to serve new items. This can be achieved, for instance, by using a two-step model [69,70] or joint-optimization [71]. Another direction to address the cold-start problem is assessing the capability of hybrid models by combining models that can serve already known items (e.g., CF) with models that can handle new items (e.g., CB).…”
Section: Cold-start Problem For New Itemsmentioning
confidence: 99%
“…Research efforts are still required to better investigate the incorporation of this rich metadata into CF-based RSs to serve new items. This can be achieved, for instance, by using a two-step model [69,70] or joint-optimization [71]. Another direction to address the cold-start problem is assessing the capability of hybrid models by combining models that can serve already known items (e.g., CF) with models that can handle new items (e.g., CB).…”
Section: Cold-start Problem For New Itemsmentioning
confidence: 99%