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A genetic programming based business process mining approach

机译:基于遗传编程的业务流程挖掘方法

摘要

As business processes become ever more complex there is a need for companies to understand the processes they already have in place. To undertake this manually would be time consuming. The practice of process mining attempts to automatically construct the correct representation of a process based on a set of process execution logs.The aim of this research is to develop a genetic programming based approach for business process mining. The focus of this research is on automated/semi automated business processes within the service industry (by semi automated it is meant that part of the process is manual and likely to be paper based). This is the first time a GP approach has been used in the practice of process mining. The graph based representation and fitness parsing used are also unique to the GP approach. A literature review and an industry survey have been undertaken as part of this research to establish the state-of-the-art in the research and practice of business process modelling and mining. It is observed that process execution logs exist in most service sector companies are not utilised for process mining.The development of a new GP approach is documented along with a set of modifications required to enable accuracy in the mining of complex process constructs, semantics and noisy process execution logs. In the context of process mining accuracy refers to the ability of the mined model to reflect the contents of the event log on which it is based; neither over describing, including features that are not recorded in the log, or under describing, just including the most common features leaving out low frequency task edges, the contents of the event log. The complexity of processes, in terms of this thesis, involves the mining of parallel constructs, processes containing complex semantic constructs (And/XOR split and join points) and processes containing 20 or more tasks. The level of noise mined by the business process mining approach includes event logs which have a small number of randomly selected tasks missing from a third of their structure. A novel graph representation for use with GP in the mining of business processes is presented along with a new way of parsing graph based individuals against process execution logs. The GP process mining approach has been validated with a range of tests drawn from literature and two case studies, provided by the industrial sponsor, utilising live process data. These tests and case studies provide a range of process constructs to fully test and stretch the GP process mining approach. An outlook is given into the future development of the GP process mining approach and process mining as a practice.
机译:随着业务流程变得越来越复杂,公司需要了解他们已经建立的流程。手动进行此操作很耗时。流程挖掘的实践试图根据一组流程执行日志自动构建流程的正确表示。本研究的目的是开发一种基于遗传编程的业务流程挖掘方法。这项研究的重点是服务行业中的自动化/半自动化业务流程(通过半自动化,这意味着流程的一部分是手动的,很可能是基于纸张的)。这是在过程挖掘实践中首次使用GP方法。 GP方法还使用了基于图的表示形式和适应性分析。作为这项研究的一部分,进行了文献综述和行业调查,以建立业务流程建模和挖掘的研究和实践的最新技术。据观察,大多数服务行业公司中都没有使用流程执行日志来进行流程挖掘。新GP方法的开发已记录在案,并进行了一系列修改,以确保准确挖掘复杂的流程构造,语义和噪声流程执行日志。在过程上下文中,准确性是指所挖掘模型反映其所基于的事件日志的内容的能力。既不过度描述(包括未记录在日志中的功能),也不在过度描述(仅在不考虑低频任务边缘的情况下仅包含最常见的功能)事件日志的内容。就本论文而言,过程的复杂性涉及挖掘并行结构,包含复杂语义结构(和/ XOR拆分和连接点)的过程以及包含20个或更多任务的过程。通过业务流程挖掘方法挖掘的噪声级别包括事件日志,这些事件日志的结构三分之一都缺少少量随机选择的任务。提出了一种与GP一起用于业务流程挖掘中的新颖图形表示形式,以及一种针对流程执行日志解析基于图形的个人的新方法。 GP过程挖掘方法已通过一系列测试,包括工业赞助商利用实时过程数据从文献和两个案例研究中进行了验证,从而得到了验证。这些测试和案例研究提供了一系列流程构造,可以全面测试和扩展GP流程挖掘方法。展望了GP工艺采矿方法的未来发展,并将工艺采矿作为一种实践。

著录项

  • 作者

    Turner Christopher J.;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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