recommended for users who are interested in or vis-
ited that attraction. Interestingly, the system would
be more effective for regular users who visit the sys-
tem frequently. Irregular users would also be offered
recommendations but limited to their available infor-
mation.
5 CONCLUSIONS AND FUTURE
WORK
Intelligent personalization has become a clear direc-
tion in the development of delivering e-Gov services
by different government agencies. This paper pro-
poses a new conceptual framework for delivering Pe-
Gov tourism services using RS techniques and se-
mantic ontology. The proposed framework can help
users find, efficiently and friendly, the most interest-
ing tourism attractions with the most appropriate ac-
tivities/events according to their interests, needs and
the behaviour/experience of other similar users. The
main components of this framework were discussed.
The potential of the proposed framework of offer-
ing better tourism services to users has been illus-
trated by a scenario example. The future direction,
of our research, would be to develop a working sys-
tem/prototype to deliver Pe-Gov tourism services to
users.
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