2013
DOI: 10.1093/bib/bbt074
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A primer to frequent itemset mining for bioinformatics

Abstract: Over the past two decades, pattern mining techniques have become an integral part of many bioinformatics solutions. Frequent itemset mining is a popular group of pattern mining techniques designed to identify elements that frequently co-occur. An archetypical example is the identification of products that often end up together in the same shopping basket in supermarket transactions. A number of algorithms have been developed to address variations of this computationally non-trivial problem. Frequent itemset mi… Show more

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Cited by 111 publications
(107 citation statements)
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“…The archetypical example of frequent itemset mining is the discovery of products that are frequently purchased together from mining large numbers of supermarket basket transactions. The study of such associations, for example the observation that beer and chips are frequently bought together, is a computationally non-trivial problem for which various algorithms have been developed, as reviewed before [18]. Despite the explosive number of possible patterns with growing datasets, frequent itemset mining techniques are available to efficiently extract all possible patterns even from large and complex databases.…”
Section: Resultsmentioning
confidence: 99%
“…The archetypical example of frequent itemset mining is the discovery of products that are frequently purchased together from mining large numbers of supermarket basket transactions. The study of such associations, for example the observation that beer and chips are frequently bought together, is a computationally non-trivial problem for which various algorithms have been developed, as reviewed before [18]. Despite the explosive number of possible patterns with growing datasets, frequent itemset mining techniques are available to efficiently extract all possible patterns even from large and complex databases.…”
Section: Resultsmentioning
confidence: 99%
“…Table 4 describes the size of the used data sets, the number of transactions and the number of items in each of the transactions. We have compared the performance of the Pe-ARM with a set of well known association rule mining algorithms (BSO-ARM [27], ACO R [13], SA [40], G3PARM [11], ARMBGSA [25]). The parameters used by these algorithms are the optimal values proposed by the authors.…”
Section: Evaluation With Standard Data Setsmentioning
confidence: 99%
“…Although the application of association rules (AR) [7] could appear as a trivial task, it is less popular than other analytical techniques, such as statistics methods. Literature reports different uses of AR mining from annotated data that are usually tailored to some specific aims as reported by Naulaerts et al [8]. For instance, Faria et al [9] proposed association rules to support GO curators by evaluating the annotation consistency in order to avoid possible inconsistent or redundant annotations.…”
Section: Introductionmentioning
confidence: 99%