Title of article :
Unexpected rules using a conceptual distance based on fuzzy ontology
Author/Authors :
Hamani, Mohamed Said University of M’sila - Lire Laboratory, Algeria , Maamri, Ramdane University of Constantine - Lire Laboratory, Algeria , Kissoum, Yacine University of Skikda - Lire Laboratory, Algeria , Sedrati, Maamar University of Hadj Lakhdar Batna, Algeria
From page :
99
To page :
109
Abstract :
One of the major drawbacks of data mining methods is that they generate a notably large number of rules that are often obvious or useless or, occasionally, out of the user’s interest. To address such drawbacks, we propose in this paper an approach that detects a set of unexpected rules in a discovered association rule set. Generally speaking, the proposed approach investigates the discovered association rules using the user’s domain knowledge, which is represented by a fuzzy domain ontology. Next, we rank the discovered rules according to the conceptual distances of the rules.
Keywords :
Fuzzy ontology , Unexpectedness , Association rule , Domain knowledge , Interestingness , Conceptual distance
Journal title :
Journal Of King Saud University - Computer an‎d Information Sciences
Journal title :
Journal Of King Saud University - Computer an‎d Information Sciences
Record number :
2609766
Link To Document :
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