2016
DOI: 10.4028/www.scientific.net/kem.693.1326
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An Efficient Parallel Association Rules Mining Algorithm for Fault Diagnosis

Abstract: With the development of Internet industry, equipment data is increasing. The traditional method is not suitable for processing large data. Aiming at inefficient problem of Apriori algorithm when mining very large database, an efficient parallel association rules mining algorithm (Advanced Pruning Parallel Apriori Algorithm) based on a cluster is presented. APPAA algorithm can enhance the mining efficiency, as well as the system’s extension. Experimental results show that APPAA algorithm cuts down 85% mining ti… Show more

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“…Initially, Ji, H.P. [33] proposed the association rule classification algorithm CBA and applied association rules to achieve data classification in 2016. However, the CBA algorithm never considered the imbalance of all types of data samples, which led to some rules being ignored and all the training examples not being able to be covered.…”
Section: Rule Classificationmentioning
confidence: 99%
“…Initially, Ji, H.P. [33] proposed the association rule classification algorithm CBA and applied association rules to achieve data classification in 2016. However, the CBA algorithm never considered the imbalance of all types of data samples, which led to some rules being ignored and all the training examples not being able to be covered.…”
Section: Rule Classificationmentioning
confidence: 99%