Please use this identifier to cite or link to this item: https://hdl.handle.net/11108/345
Title: 

Content Recommendation through Semantic Annotation of User Reviews and Linked Data

Authors: 
Vagliano, Iacopo
Monti, Diego
Scherp, Ansgar
Morisio, Maurizio
Year of Publication: 
2017
Citation: 
[Title:] K-CAP 2017: Proceedings of the Knowledge Capture Conference, Article No. 32, Austin, TX, USA, December 04 - 06, 2017 [Publisher:] ACM [Place:] New York, NY, USA
Abstract: 
Nowadays, most recommender systems exploit user-provided ratings to infer their preferences. However, the growing popularity of social and e-commerce websites has encouraged users to also share comments and opinions through textual reviews. In this paper, we introduce a new recommendation approach which exploits the semantic annotation of user reviews to extract useful and non-trivial information about the items to recommend. It also relies on the knowledge freely available in the Web of Data, notably in DBpedia and Wikidata, to discover other resources connected with the annotated entities. We evaluated our approach in three domains, using both DBpedia and Wikidata. The results showed that our solution provides a better ranking than another recommendation method based on the Web of Data, while it improves in novelty with respect to traditional techniques based on ratings.
Persistent Identifier of the first edition: 

Files in This Item:
There are no files associated with this item.





Items in ZBWPub are protected by copyright, with all rights reserved, unless otherwise indicated.