Title of article :
Mining Association Rules from SemanticWeb Data without User Intervention
Author/Authors :
Ramezani, Reza Department of Software Engineering - Faculty of Computer Engineering - University of Isfahan, Iran , Nematbakhsh, Mohammad Ali Department of Software Engineering - Faculty of Computer Engineering - University of Isfahan, Iran , Saraee, Mohamad School of Computing - Science and Engineering - University of Salford, Manchester, UK
Abstract :
With the introduction and standardization of the semantic web as the third
generation of the web, this technology has attracted and received more
human attention than ever. Thus, the amount of semantic web data is
continuously growing, which makes them a rich source of useful data for data
mining techniques. Semantic web data have some complexities, such as the
heterogeneous structure of data, the lack of well-dened transactions, and the
existence of typed relations between items. In this paper, a new technique
named SWApriori is presented, which by using both entities and relations in
the extraction of frequent itemsets, generates a new class of association rules
(ARs) from semantic web data. The proposed technique by considering the
complex heterogeneous nature of semantic web data, without any need to a
domain expert, and without any data conversion to transactional data format
extracts ARs from semantic web data directly. For evaluation, the proposed
technique is applied to Factbook and DBPedia datasets. The experimental
results demonstrate the ability of the proposed technique in extracting
relational ARs from semantic web data by considering the mentioned challenges.
Supplementary experiments show that the proposed technique can extract
interesting patterns that are not discoverable by state-of-the-art association
rule mining techniques.
Keywords :
SWApriori , Data Mining , Association Rules , Semantic Web
Journal title :
Journal of Computing and Security