One suggestion for future work is to apply the Elbow
Curve, a popular method for finding the optimal num-
ber of clusters when working with the K-Means clas-
sification algorithm (Kaufman and Rousseeuw, 1990).
We propose to investigate the possibility of finding the
ideal value to K by adapting the Elbow Method, with
the purpose of improving the results personalization
strategies of this work.
8 CONCLUSION
In this paper, we proposed personalization strategies
for LD-based recommender systems. We use a user
modeling process that analyses the past interactions
of the user with the system to rank the properties that
are used in the recommender model. After ranking
the properties, we applied the Personalized Linked
Data Semantic Distance (PLDSD) similarity measure,
which generates a rank of items to recommend to the
user. We run experiments comparing the PLDSD re-
sults to the classic LDSD measure using 3 different
metrics. We also performed comparative experiments
using an adapted implementation of an LD-oriented
feature selection strategy, so that only the most rele-
vant properties for the system were considered in part
of the calculations.
The evaluation results show the best values for
PLDSD combined with a k = 10 choice of feature
selection strategy, that outperforms the unweighted
and not filtered baseline method LDSD. We can state
that this work achieved the goal of obtaining better
accuracy and performance of LD-based RS when us-
ing movie and music datasets from DBpedia. An im-
provement in the results was noticed when the num-
ber of items evaluated was increased and the number
of selected properties was reduced with the applica-
tion of the filtering step. The results of the PLDSD
metrics combined with the filter properties stood out
from the others in all the tests performed.
As future work, we aim to test our model us-
ing other LD-based similarity measures in order to
compare and determine which one performs better.
We also plan to conduct more studies regarding the
feature selection task, by using other LD-driven ap-
proaches and comparing them to the baseline meth-
ods used so far. Another possible future work is to
evaluate this approach using a cross-domain dataset,
which would enable the development of multi-domain
recommendations for general use in linked datasets.
ACKNOWLEDGEMENTS
This work was partially funded by the Coordenac¸
˜
ao
de Aperfeic¸oamento de Pessoal de N
´
ıvel Superior -
Brasil (CAPES) – Grant number 001.
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