2019
DOI: 10.1002/widm.1307
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A survey on association rules mining using heuristics

Abstract: Association rule mining (ARM) is a commonly encountred data mining method. There are many approaches to mining frequent rules and patterns from a database and one among them is heuristics. Many heuristic approaches have been proposed but, to the best of our knowledge, there is no comprehensive literature review on such approaches, yet with only a limited attempt. This gap needs to be filled. This paper reviews heuristic approaches to ARM and points out their most significant strengths and weaknesses. We propos… Show more

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Cited by 50 publications
(25 citation statements)
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References 93 publications
(369 reference statements)
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“…It should be noted that, to our knowledge, the only comparison between the previous methods and APRIORI has been carried out in Hamdad et al [30] which show that GA-ARM have given the best results in terms of number of obtained rules when compared with AGA, IGA, ARMGA, MBAREA on three datasets: IBM Quest synthetic database, Mushroom and Chess [28]; UCI 2015). A recent survey have been proposed on heuristics in association rules mining (see [24]).…”
Section: Other Approximate Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…It should be noted that, to our knowledge, the only comparison between the previous methods and APRIORI has been carried out in Hamdad et al [30] which show that GA-ARM have given the best results in terms of number of obtained rules when compared with AGA, IGA, ARMGA, MBAREA on three datasets: IBM Quest synthetic database, Mushroom and Chess [28]; UCI 2015). A recent survey have been proposed on heuristics in association rules mining (see [24]).…”
Section: Other Approximate Methodsmentioning
confidence: 99%
“…But these surveys had different objectives. Indeed, in 2020, Ghafari et al [24] focused on works addressing ARs using heuristics. Algorithms such as ARGMA, HBSO and others have been compared according to several metrics as execution time, relevance, memory used, etc.…”
Section: Lift(r) =mentioning
confidence: 99%
“…Association Rules (AR) is one of the most popular methods [125] within the context of extracting relationships among items hidden within data sets [126], as it has been used in several smart city applications [44,77,127,128]. Agrawal and Strikant [129] presented the Apriori algorithm for discovering all significant AR between items in a large database of transactions.…”
Section: Association Rulesmentioning
confidence: 99%
“…In this proposal, the authors modified the cuckoo search algorithm to a binary algorithm based on the sigmoid function and applied it to the ARM issue. A fresh survey outlined the whole domain based heuristic methods is in [31] .…”
Section: Related Workmentioning
confidence: 99%