mobile users. Another benefit of LOAS is that it will
enable users to choose more appropriate activities
and to share them with their friends, to socialize
more efficiently. The results of an evaluation
performed on real users show that the proposed
approach provides significant benefits in terms of
effectiveness compared with nonpersonalized
recommendation algorithms.
In this study, experimental tests have been
conducted to demonstrate the accuracy and
feasibility of the study. The next stages of the study,
people can be grouped according to the activities by
using k-means algorithm. Then, by using appriori
algorithm, more detailed guidance to these groups is
planned. The study was conducted to demonstrate
the use of contex-aware system by using collected
data in the mobile environment. Nowadays, it is
believed that the people can be consciously
directed with the participation of increasingly
widespread and social networks. In this preliminary
study, positive results have been taken in this
direction. In the next stages, evaluation of the results
is planned on more subjects by using clustering and
association rule mining. On the other hand, we plan
to combine the users’ demographic data and activity
trends, to be investigated in detail in future studies.
In addition, we intend to prepare a model for the
creation of specific groups of users and the
development of helpful guidance for new members
in these groups. Thus, we will be able to analyze and
make suggestions based on not only users but also
groups. Furthermore, augmented reality
implementations have become more widespread in
various mobile environments. In order to present
activity-related information more effectively, we
intend to include additional application into LOAS
to track the users' impacts.
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