Some existing notions of redundancy among association rules allow for a logical-style characterization and lead to irredundant bases of absolutely minimum size. One can push the intuition of redundancy further and find an intuitive notion of interest of an association rule, in terms of its “novelty ” with respect to other rules. Namely: an irredundant rule is so because its confidence is higher than what the rest of the rules would suggest; then, one can ask: how much higher? We propose to measure such a sort of “novelty ” through the confidence boost of a rule, which encompasses two previous similar notions (confidence width and rule blocking, of which the latter is closely related to the earlier measure “improvement”). Acting as a complem...
Chi squared analysis is useful in determining the sta-tistical significance level of association rul...
In this paper, we generalize the optimized support association rule problem by permitting rules to c...
The lift of an association rule is frequently used, both in itself and as a component in formulae, t...
Association rule mining is well-known to depend heavily on a support threshold parameter, and on one...
International audienceMany studies have shown the limits of support/confidence framework used in Apr...
International audienceMany studies have shown the limits of support/confidence framework used in Apr...
Abstract. In this paper, we explore extending association analysis to non-traditional types of patte...
Mining association rules is an important technique for discovering meaningful patterns in transactio...
Association rules are among the most widely employed data analysis methods inthe field of Data Minin...
Many algorithms have been proposed for computing association rules using the support-confidence fra...
Association rule mining is to find out association rules that satisfy the predefined minimum support...
International audienceAssociation rules discovery is one of the most important tasks in Knowledge Di...
Searching statistically significant association rules is an important but neglected problem. Traditi...
Association rule mining is a task in data mining for discovering the hidden, interesting association...
An open problem is to find all rules that satisfy a minimum confidence but not necessarily a minimum...
Chi squared analysis is useful in determining the sta-tistical significance level of association rul...
In this paper, we generalize the optimized support association rule problem by permitting rules to c...
The lift of an association rule is frequently used, both in itself and as a component in formulae, t...
Association rule mining is well-known to depend heavily on a support threshold parameter, and on one...
International audienceMany studies have shown the limits of support/confidence framework used in Apr...
International audienceMany studies have shown the limits of support/confidence framework used in Apr...
Abstract. In this paper, we explore extending association analysis to non-traditional types of patte...
Mining association rules is an important technique for discovering meaningful patterns in transactio...
Association rules are among the most widely employed data analysis methods inthe field of Data Minin...
Many algorithms have been proposed for computing association rules using the support-confidence fra...
Association rule mining is to find out association rules that satisfy the predefined minimum support...
International audienceAssociation rules discovery is one of the most important tasks in Knowledge Di...
Searching statistically significant association rules is an important but neglected problem. Traditi...
Association rule mining is a task in data mining for discovering the hidden, interesting association...
An open problem is to find all rules that satisfy a minimum confidence but not necessarily a minimum...
Chi squared analysis is useful in determining the sta-tistical significance level of association rul...
In this paper, we generalize the optimized support association rule problem by permitting rules to c...
The lift of an association rule is frequently used, both in itself and as a component in formulae, t...