用关联规则挖掘算法分析染色加工系统中频繁图案

Madderi Sivalingam Saravanan, G. Bellarmine, R. J. Rama Sree
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引用次数: 1

摘要

本文提出了一种简单的基于链接结构的频繁模式挖掘算法。“LinkRuleMiner”有一个明显的特点,它有一个非常有限和精确可预测的主内存成本,并在基于内存的设置中运行得非常快。此外,它可以使用数据库分区扩展到非常大的数据库。本文采用新提出的基于频繁模式的关联规则挖掘算法“LinkRuleMiner”对染色单元的着色过程进行了分析。这些频繁的图案对染色过程的不同处理有信心。这些信心有助于染色单位专家称为染色师预测更好的组合或处理的关联。本文还提出将LRM算法应用到染色单元的染色过程中,这可能会对染色行业的染色过程产生重大影响,使其颜色得到有效处理,而不会出现色差、色斑等染色问题。本文表明,LinkRuleMiner对各种类型的数据具有出色的性能,可以创建频繁的模式,优于当前染色处理系统中可用的算法,并且具有高度可扩展性,可以挖掘大型数据库。它是HMine的修正算法,不需要任何链接的调整。改进后的算法具有与原算法相当的性能,并且易于扩展到并行环境中使用。因此,本文主要对染色过程中各种颜色深浅的知识发现作出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of frequent patterns in dyeing processing system using association rule mining algorithms
This article proposes a simple frequent pattern mining algorithm using link structure. The “LinkRuleMiner” has a distinct feature that it has a very limited and precisely predictable main memory cost and runs very quickly in memory based settings. Moreover, it can be scaled up to very large databases using database partitioning. This article analyzes the coloring process of dyeing unit using newly proposed association rule mining algorithm “LinkRuleMiner” using frequent patterns. These frequent patterns have a confidence for different treatments of the dyeing process. These confidences help the dyeing unit expert called dyer to predict better combination or association of treatments. This article also proposes to implement LRM algorithm to the dyeing process of dyeing unit, which may have a major impact on the coloring process of dyeing industry to process their colors effectively without any dyeing problems, such as pales, dark spots on the colored yarn. This article shows that LinkRuleMiner has an excellent performance for various kinds of data to create frequent patterns, outperforms currently available algorithms in dyeing processing systems, and is highly scalable to mining large databases. It is a revised algorithm of HMine that does not need any adjustment of links. The revised algorithm has comparable performance with the original version and can be easily extended to use in parallel environment. Hence this article mainly contributes more on knowledge discovery of various shades of the color in the dyeing process.
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