Context-Aware Systems and Applications, and Nature of Computation and Communication. 6th International Conference, ICCASA 2017, and 3rd International Conference, ICTCC 2017, Tam Ky, Vietnam, November 23-24, 2017, Proceedings

Research Article

A Resource-Aware Preference Model for Context-Aware Systems

Download
177 downloads
  • @INPROCEEDINGS{10.1007/978-3-319-77818-1_1,
        author={Ijaz Uddin and Abdur Rakib},
        title={A Resource-Aware Preference Model for Context-Aware Systems},
        proceedings={Context-Aware Systems and Applications, and Nature of Computation and Communication. 6th International Conference, ICCASA 2017, and 3rd International Conference, ICTCC 2017, Tam Ky, Vietnam, November 23-24, 2017, Proceedings},
        proceedings_a={ICCASA \& ICTCC},
        year={2018},
        month={3},
        keywords={Context-aware Preferences Personalisation Defeasible reasoning},
        doi={10.1007/978-3-319-77818-1_1}
    }
    
  • Ijaz Uddin
    Abdur Rakib
    Year: 2018
    A Resource-Aware Preference Model for Context-Aware Systems
    ICCASA & ICTCC
    Springer
    DOI: 10.1007/978-3-319-77818-1_1
Ijaz Uddin1,*, Abdur Rakib2,*
  • 1: The University of Nottingham Malaysia Campus
  • 2: The University of the West of England
*Contact email: khyx4iui@nottingham.edu.my, Rakib.Abdur@uwe.ac.uk

Abstract

In mobile computing, context-awareness has recently emerged as an effective approach for building adaptive pervasive computing applications. Many of these applications exploit information about the context of use as well as incorporate personalisation mechanisms to achieve intended personalised system behaviour. Context-awareness and personalisation are important in the design of decision support and personal notification systems. However, personalisation of context-aware applications in resource-bounded devices are more challenging than that of the resource-rich desktop applications. In this paper, we enhance our previously developed approach to personalisation of resource-bounded context-aware applications using a derived context-based preference model.