2020
DOI: 10.18178/ijmlc.2020.10.1.899
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Folksonomy Graphs Based Context-Aware Recommender System Using Spectral Clustering

Abstract: The advent of collaborative information systems has scaled up the growth of the web into a huge repository of all kind of resources. The web user can share and annotate any identifiable thing, resource or item on the web. The social web has also empowered users by the tagging practice that enables a collaborative classification, folksonomy, of their shared resources. Still, the abundant web contents are mostly unorganized which make it hard for users to find and discover items of their interests. Thus, many ma… Show more

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Cited by 2 publications
(1 citation statement)
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“…Besides, we aim to model the linking among these resources by using multilayer graphs that represent the Folksonomy tripartite relationship of users annotating resources by using tags. The concept of a semantic graph-based recommender system is analogical to the knowledge graphs used to enhance the search engines used by giants companies like Amazon and Facebook that constructed their knowledge graphs to incorporate their large amounts of data [Qassimi et al 2020].…”
Section: Semantically Enhancing the Model Of Recommender Systemmentioning
confidence: 99%
“…Besides, we aim to model the linking among these resources by using multilayer graphs that represent the Folksonomy tripartite relationship of users annotating resources by using tags. The concept of a semantic graph-based recommender system is analogical to the knowledge graphs used to enhance the search engines used by giants companies like Amazon and Facebook that constructed their knowledge graphs to incorporate their large amounts of data [Qassimi et al 2020].…”
Section: Semantically Enhancing the Model Of Recommender Systemmentioning
confidence: 99%