Parallel and Distributed Pattern Mining

Ishak H. A. Meddah, Nour El Houda Remil
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引用次数: 16

Abstract

The treatment of large data is difficult and it looks like the arrival of the framework MapReduce is a solution of this problem. This framework can be used to analyze and process vast amounts of data. This happens by distributing the computational work across a cluster of virtual servers running in a cloud or a large set of machines. Process mining provides an important bridge between data mining and business process analysis. Its techniques allow for extracting information from event logs. Generally, there are two steps in process mining, correlation definition or discovery and the inference or composition. First of all, their work mines small patterns from log traces. Those patterns are the representation of the traces execution from a log file of a business process. In this step, the authors use existing techniques. The patterns are represented by finite state automaton or their regular expression; and the final model is the combination of only two types of different patterns whom are represented by the regular expressions (ab)* and (ab*c)*. Second, they compute these patterns in parallel, and then combine those small patterns using the Hadoop framework. They have two steps; the first is the Map Step through which they mine patterns from execution traces, and the second one is the combination of these small patterns as a reduce step. The results show that their approach is scalable, general and precise. It minimizes the execution time by the use of the Hadoop framework.
并行和分布式模式挖掘
处理大数据是困难的,看起来框架MapReduce的到来是这个问题的解决方案。该框架可用于分析和处理大量数据。这是通过将计算工作分布到运行在云中的虚拟服务器集群或大型机器集来实现的。流程挖掘在数据挖掘和业务流程分析之间提供了一个重要的桥梁。它的技术允许从事件日志中提取信息。一般来说,过程挖掘分为两个步骤:关联定义或发现和推理或组合。首先,他们的工作是从日志痕迹中挖掘出小的模式。这些模式是业务流程日志文件中跟踪执行的表示。在这一步中,作者使用了现有的技术。模式由有限状态自动机或它们的正则表达式表示;最后一个模型是两种不同模式的组合,它们由正则表达式(ab)*和(ab*c)*表示。其次,他们并行计算这些模式,然后使用Hadoop框架组合这些小模式。它们有两个步骤;第一个是Map步骤,通过这个步骤,他们可以从执行轨迹中挖掘模式,第二个是将这些小模式组合起来作为reduce步骤。结果表明,该方法具有可扩展性、通用性和精确性。它通过使用Hadoop框架最小化了执行时间。
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