A Recommender System for the Semantic Web

Цена 57.60 - 69.79 USD

EAN/UPC/ISBN Code 9783639510232

Брэнд Scholar's Press

Автор

Издатель Scholars' Press

Страниц 112

Год выпуска 2012

Recommender Systems are the common solution to the problem of content overload. This book presents a novel content-based recommender enhanced with semantic knowledge, which can overcome the main limitations of Collaborative Filtering approaches related to the lack of user data: the cold-start and the data sparsity. The main novelties of the proposed recommender are: (1) the user-profile learning algorithm, which combines user’s feedback from different channels and employs specific domain inferences to construct accurate user profiles; (2) the prediction method, which exploits the semantic structure of the ontologies to generate accurate predictions. The system’s design proposed is flexible enough to be potentially applied to Web applications of any domain that can be properly described using ontologies based on Semantic Web technologies. As case study, the proposed recommender has been integrated into an existing tourism application that provides information about tourist attractions....