首页> 外文会议>Twenty-Seventh International Conference on Very Large Data Bases, 27th, Sep 11-14th, 2001, Roma, Italy >Improving Business Process Quality through Exception Understanding, Prediction, and Prevention
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Improving Business Process Quality through Exception Understanding, Prediction, and Prevention

机译:通过异常理解,预测和预防提高业务流程质量

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摘要

Business process automation technologies are being increasingly used by many companies to improve the efficiency of both internal processes as well as of e-services offered to customers. In order to satisfy customers and employees, business processes need to be executed with a high and predictable quality. In particular, it is crucial for organizations to meet the Service Level Agreements (SLAs) stipulated with the customers and to foresee as early as possible the risk of missing SLAs, in order to set the right expectations and to allow for corrective actions. In this paper we focus on a critical issue in business process quality: that of analyzing, predicting and preventing the occurrence of exceptions, i.e., of deviations from the desired or acceptable behavior. We characterize the problem and propose a solution, based on data warehousing and mining techniques. We then describe the architecture and implementation of a tool suite that enables exception analysis, prediction, and prevention. Finally, we show experimental results obtained by using the tool suite to analyze internal HP processes.
机译:许多公司越来越多地使用业务流程自动化技术来提高内部流程以及提供给客户的电子服务的效率。为了使客户和员工满意,业务流程需要以高且可预测的质量执行。尤其重要的是,组织必须满足客户规定的服务水平协议(SLA),并尽早预见丢失SLA的风险,以便设定正确的期望并采取纠正措施。在本文中,我们专注于业务流程质量中的一个关键问题:分析,预测和防止异常发生(即与预期或可接受行为的偏离)的问题。我们根据数据仓库和挖掘技术对问题进行特征描述并提出解决方案。然后,我们描述了支持异常分析,预测和预防的工具套件的体系结构和实现。最后,我们展示了使用该工具套件分析内部HP流程所获得的实验结果。

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