Title of article :
An algorithm to mine general association rules from tabular data
Author/Authors :
Siyamand Ayubi، نويسنده , , Maybin K. Muyeba، نويسنده , , Ahmad Baraani-Dastjerdi، نويسنده , , John Keane، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
20
From page :
3520
To page :
3539
Abstract :
Most methods for mining association rules from tabular data mine simple rules which only use the equality operator “=” in their items. For quantitative attributes, approaches tend to discretize domain values by partitioning them into intervals. Limiting the operator only to “=” results in many interesting frequent patterns that may not be identified. It is obvious that where there is an order between objects, operators such as greater than or less than a given value are as important as the equality operator. This motivates us to extend association rules, from the simple equality operator, to a more general set of operators. We address the problem of mining general association rules in tabular data where rules can have all operators {⩽, >, ≠, =} in their antecedent part. The proposed algorithm, mining general rules (MGR), is applicable to datasets with discrete-ordered attributes and on quantitative discretized attributes. The proposed algorithm stores candidate general itemsets in a tree structure in such a way that supports of complex itemsets can be recursively computed from supports of simpler itemsets. The algorithm is shown to have benefits in terms of time complexity, memory management and has good potential for parallelization.
Keywords :
DATA MINING , General association rules , Equality operators , Tabular data , Signature
Journal title :
Information Sciences
Serial Year :
2009
Journal title :
Information Sciences
Record number :
1213756
Link To Document :
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