使用新的关联规则挖掘算法和聚类方法生成简单的过程模型

Madderi Sivalingam Saravanan, R. Sree
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引用次数: 5

摘要

在最近的研究领域中,关联规则挖掘是数据挖掘领域的热门技术之一。关联规则挖掘在我之前的研究论文中首次在染色单元中实现。但是这种关联规则挖掘技术已经在金融、医疗、汽车、销售和分销等领域得到了应用。本文以染色工艺为例,为染色单元生成简单的工艺模型。简化的过程模型不是图的形式,而是规则的形式。这些规则是使用关联规则挖掘算法开发的。采用启发式挖掘算法(Heuristic Miner, HM)和析取工作流模式(Disjunctive Workflow Schema, DWS)生成关联规则挖掘规则。因此,提出的LinkRuleMiner (LRM)关联规则挖掘算法使用HM或DWS算法在染色单元中实现。染色过程在本质上是动态的和非结构化的。染色过程以事件日志的形式记录和存储。这些事件日志被转换成日志文件。这些日志文件作为LRM算法的输入。LRM算法生成简单的关联规则。这些规则很容易被称为染色师的染色专家理解,以处理染色单元的着色过程。还可以使用聚类方法对这些生成的关联规则进行相同或不同色调的分组。因此,本文采用LRM算法对染色过程进行简化,使染色工更好地了解染色工艺,减少染色机组的染色加工问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A simple process model generation using a new association rule mining algorithm and clustering approach
In the recent research area, the association rule mining is one of the popular technique in the domain of data mining. The association rule mining is first implemented in dyeing unit in my previous research papers. But already this association rule mining technique is used in the area of finance, healthcare, automobile and sales and distribution, etc. In this article, the dyeing process, generate the simple process model for the dyeing unit. The simplified process model is not in the form of diagram, instead rules. These rules are developing using association rule mining algorithms. The process mining algorithms, Heuristic Miner (HM) and Disjunctive Workflow Schema (DWS) are used to generate the association rule mining rules. Hence, the proposed LinkRuleMiner (LRM) association rule mining algorithm is implemented in the dyeing unit using HM or DWS algorithm. The dyeing process is dynamic and unstructured in nature. The dyeing process is recorded and stored in the form of event logs. These event logs are converted in to the log file. These log files are given as input to the LRM algorithm. The LRM algorithm produces the simple association rules. These rules can be easily understood by the dyeing expert called dyer to process the colouring process of the dyeing unit. These generated association rules can also be grouped for the same or different shades using the clustering approach. Therefore, this article simplify the dyeing process using LRM algorithm to give better knowledge to the dyer and to reduce the dyeing processing problems of the dyeing unit.
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