A new method for ranking discovered rules from data mining by DEA

M Toloo, B Sohrabi, S Nalchigar - Expert Systems with Applications, 2009 - Elsevier
Expert Systems with Applications, 2009Elsevier
Data mining techniques, extracting patterns from large databases have become widespread
in business. Using these techniques, various rules may be obtained and only a small
number of these rules may be selected for implementation due, at least in part, to limitations
of budget and resources. Evaluating and ranking the interestingness or usefulness of
association rules is important in data mining. This paper proposes a new integrated data
envelopment analysis (DEA) model which is able to find most efficient association rule by …
Data mining techniques, extracting patterns from large databases have become widespread in business. Using these techniques, various rules may be obtained and only a small number of these rules may be selected for implementation due, at least in part, to limitations of budget and resources. Evaluating and ranking the interestingness or usefulness of association rules is important in data mining. This paper proposes a new integrated data envelopment analysis (DEA) model which is able to find most efficient association rule by solving only one mixed integer linear programming (MILP). Then, utilizing this model, a new method for prioritizing association rules by considering multiple criteria is proposed. As an advantage, the proposed method is computationally more efficient than previous works. Using an example of market basket analysis, applicability of our DEA based method for measuring the efficiency of association rules with multiple criteria is illustrated.
Elsevier
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