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A Semantic Method to Extract the User Interest Center

  • Ibtissam El AchkarEmail author
  • Amine Labriji
  • Labriji El Houssine
Conference paper
Part of the Lecture Notes in Intelligent Transportation and Infrastructure book series (LNITI)

Abstract

With the evolution of information systems and the large mass of heterogeneous data on the web, problems such as cognitive overload and disorientation (Conklin and Begeman in GIBIS a hypertext tool for team design deliberation, pp. 247–251, [1]) are starting to appear, and to overcome them several techniques have been invented to customize the information system, in order to improve search engine performance as well as recommendation engines. (Zeng et al. in Temporal User Profile Based Recommender System. Artificial Intelligence and Soft Computing. ICAISC 2018, [2], Su et al. in Music Recommendation Based on Information of User Profiles, Music Genres and User Ratings. Intelligent Information and Database Systems. ACIIDS 2018, [3]) have shown that the best techniques to provide relevant results to the specific needs of the user are based on the use of user profiles and more specifically its interests. Generally the selection of interesting documents to a user is done on the basis of his area of interest, inferred from the information about the user or his user profile. Thus the calculation of the interest center is one of the essential elements for a relevant research. In this article we will introduce a new method of extracting the user’s interests from his knowledge, based on the structure of an ontology to deduce the user’s interest’s center, taking into account the semantic links between the graph’s concepts.

Keywords

User profile Interest center Semantic web Recommender systems Adaptive information systems Ontology Similarity measurement Conceptual graph 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • Ibtissam El Achkar
    • 1
    Email author
  • Amine Labriji
    • 1
  • Labriji El Houssine
    • 1
  1. 1.Laboratory of Technological Information and Modeling, Faculty of Sciences Ben M’sickUniversity Hassan IICasablancaMorocco

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