Smart City Gnosys

Smart city article details

Title On The Challenge Of Service Recommendation To Mobile Users In Smart Cities: Context And Architecture
ID_Doc 39808
Authors Ameur A.; Ichou S.; Hammoudi S.; Benna A.; Meziane A.
Year 2020
Published International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 44, 4/W2-2020
DOI http://dx.doi.org/10.5194/isprs-archives-XLIV-4-W2-2020-1-2020
Abstract The industrial and academic interest of the research on mobile service recommendation systems based on a wide range of potential applications has significantly increased, owing to the rapid progress of mobile technologies. These systems aim to recommend the right product, service or information to the right mobile users at anytime and anywhere. In smart cities, recommending such services becomes more interesting but also more challenging due to the wide range of information that can be obtained on the user and his surrounding. This quantity and variety of information create problems in terms of processing as well as the problem of choosing the right information to use to offer services. We consider that to provide personalized mobile services in a smart city and know which information is relevant for the recommendation process, identifying and understanding the context of the mobile user is the key./This paper aims to address the issue of recommending personalized mobile services in smart cities by considering two steps: defining the context of the mobile user and designing an architecture of a system that can collect and process context data. Firstly, we propose an UML-based context model to show the contextual parameters to consider in recommending mobile services in a smart city. The model is based on three main classes from which others are divided: the user, his device and the environment. Secondly, we describe a general architecture based on the proposed context model for the collection and processing of context data./ © Authors 2020.
Author Keywords architecture; context; mobile service recommendation systems; mobile technologies; personalized mobile services; smart cities


Similar Articles


Id Similarity Authors Title Published
57991 View0.898Boudaa, B; Hammoudi, S; Benslimane, SMTowards An Extensible Context Model For Mobile User In Smart CitiesCOMPUTATIONAL INTELLIGENCE AND ITS APPLICATIONS, 522 (2018)
2659 View0.894Khan A.; Ahmad A.; Rahman A.U.; Alkhalil A.A Mobile Cloud Framework For Context-Aware And Portable Recommender System For Smart MarketsEAI/Springer Innovations in Communication and Computing (2020)
37339 View0.892Gutowski N.; Amghar T.; Camp O.; Hammoudi S.Mobility And Prediction: An Asset For Crisis ManagementHow Information Systems Can Help in Alarm/Alert Detection (2018)
19482 View0.869Rafique W.; Hafid A.S.; Qadir J.Developing Smart City Services Using Intent-Aware Recommendation Systems: A SurveyTransactions on Emerging Telecommunications Technologies, 34, 4 (2023)
28639 View0.867Sandu A.; Cotfas L.-A.; Stănescu A.; Delcea C.Guiding Urban Decision-Making: A Study On Recommender Systems In Smart CitiesElectronics (Switzerland), 13, 11 (2024)
8934 View0.862Madani R.; Ez-Zahout A.; Idrissi A.An Overview Of Recommender Systems In The Context Of Smart CitiesProceedings of 2020 5th International Conference on Cloud Computing and Artificial Intelligence: Technologies and Applications, CloudTech 2020 (2020)
44643 View0.861Quijano-Sánchez L.; Cantador I.; Cortés-Cediel M.E.; Gil O.Recommender Systems For Smart CitiesInformation Systems, 92 (2020)
16633 View0.858Mezni H.; Sellami M.; Al-Rasheed A.; Elmannai H.Cross-Network Service Recommendation In Smart CitiesConcurrency and Computation: Practice and Experience, 36, 13 (2024)