There are many advanced techniques that can efficiently mine frequent itemsets using a minimum-support. However, the question that remains unanswered is whether the minimum-support can really help decision makers to make decisions. In this paper, we study four summary queries for frequent itemsets mining, namely, (1) finding a support-average of itemsets, (2) finding a support-quantile of itemsets, (3) finding the number of itemsets that greater/less than the support-average, i.e., an approximated distribution of itemsets, and (4) finding the relative frequency of an itemset (compared its frequency with that of other itemsets in the same dataset). With these queries, a decision maker will know whether an itemset in question is greater/less ...
International audienceGiven a large collection of transactions containing items, a basic common data...
Interesting patterns often occur at varied lev-els of support. The classic association mining based ...
All frequent itemset mining algorithms rely heavily on the monotonicity principle for pruning. This ...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Mining Frequent Itemsets is the core operation of many data mining algorithms. This operation howeve...
International audienceTemporal regularity of itemset appearance can be regarded as an important crit...
Frequent pattern mining is based on the assumption that users can specify the minimum-support for mi...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
The main computational effort in generating all frequent itemsets in a transactional database is in ...
Traditional association mining algorithms use a strict definition of support that requires every ite...
Abstract: Problem statement: Frequent itemset mining is an important task in data mining to discover...
In recent years, due to the wide applications of uncertain data, mining frequent itemsets over uncer...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
International audienceGiven a large collection of transactions containing items, a basic common data...
Interesting patterns often occur at varied lev-els of support. The classic association mining based ...
All frequent itemset mining algorithms rely heavily on the monotonicity principle for pruning. This ...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Mining Frequent Itemsets is the core operation of many data mining algorithms. This operation howeve...
International audienceTemporal regularity of itemset appearance can be regarded as an important crit...
Frequent pattern mining is based on the assumption that users can specify the minimum-support for mi...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
The main computational effort in generating all frequent itemsets in a transactional database is in ...
Traditional association mining algorithms use a strict definition of support that requires every ite...
Abstract: Problem statement: Frequent itemset mining is an important task in data mining to discover...
In recent years, due to the wide applications of uncertain data, mining frequent itemsets over uncer...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
Abstract—In classical association rules mining, a minimum support threshold is assumed to be availab...
International audienceGiven a large collection of transactions containing items, a basic common data...
Interesting patterns often occur at varied lev-els of support. The classic association mining based ...
All frequent itemset mining algorithms rely heavily on the monotonicity principle for pruning. This ...