1999
DOI: 10.1007/3-540-46846-3_4
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CAEP: Classification by Aggregating Emerging Patterns

Abstract: Emerging patterns (EPs) are itemsets whose supports change significantly from one dataset to another; they were recently proposed to capture multi-attribute contrasts between data classes, or trends over time. In this paper we propose a new classifier, CAEP, using the following main ideas based on EPs: (i) Each EP can sharply differentiate the class membership of a (possibly small) fraction of instances containing the EP, due to the big difference between its supports in the opposing classes; we define the dif… Show more

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Cited by 299 publications
(244 citation statements)
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“…Using patterns that hold in 0/1 data as features (e.g., itemsets or association rules) is not new. Indeed, pioneering work on classification based on association rules [7] or emerging pattern discovery [8,9] have given rise to many proposals. Descriptive pattern discovery from unlabeled 0/1 data has been studied extensively during the last decade: many algorithms have been designed to compute every set pattern that satisfies a given constraint (e.g., a conjunction of constraints whose one conjunct is a minimal frequency constraint).…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Using patterns that hold in 0/1 data as features (e.g., itemsets or association rules) is not new. Indeed, pioneering work on classification based on association rules [7] or emerging pattern discovery [8,9] have given rise to many proposals. Descriptive pattern discovery from unlabeled 0/1 data has been studied extensively during the last decade: many algorithms have been designed to compute every set pattern that satisfies a given constraint (e.g., a conjunction of constraints whose one conjunct is a minimal frequency constraint).…”
Section: Introductionmentioning
confidence: 99%
“…Several algorithms have exploited this for feature construction. Some of them select essential ones (CAEP classifier [8]) or the most expressive ones (JEPs classifier [9]). Then, an incoming example is labeled with the class c which maximizes scores based on these sets.…”
Section: Introductionmentioning
confidence: 99%
“…In the future, the authors will extend the application scope of IIDS to some classification models. Classification is an important problem in data mining; several researchers have integrated classification and association rule mining [14,25]. Thus, the connection between utility mining and associative classification should be further investigated.…”
Section: Discussionmentioning
confidence: 99%
“…The applications of EPs include analyzing biological data [36,39,55] and building classifiers [21,34,35,37,38]. The central idea is to perform classification by leveraging the power of EPs present in instances to be classified.…”
Section: Emerging Pattern Miningmentioning
confidence: 99%