Business process improvement by means of Big Data based Decision Support Systems: a case study on Call Centers

Alejandro Vera-Baquero, R. Colomo‐Palacios, O. Molloy, Mahmoud Elbattah
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引用次数: 13

Abstract

Big Data is a rapidly evolving and maturing field which places significant data storage and processing power at our disposal. To take advantage of this power, we need to create new means of collecting and processing large volumes of data at high speed. Meanwhile, as companies and organizations, such as health services, realize the importance and value of "joined-up thinking" across supply chains and healthcare pathways, for example, this creates a demand for a new type of approach to Business Activity Monitoring and Management. This new approach requires Big Data solutions to cope with the volume and speed of transactions across global supply chains. In this paper we describe a methodology and framework to leverage Big Data and Analytics to deliver a Decision Support framework to support Business Process Improvement, using near real-time process analytics in a decision-support environment. The system supports the capture and analysis of hierarchical process data, allowing analysis to take place at different organizational and process levels. Individual business units can perform their own process monitoring. An event-correlation mechanism is built into the system, allowing the monitoring of individual process instances or paths.
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基于大数据的决策支持系统的业务流程改进:以呼叫中心为例
大数据是一个快速发展和成熟的领域,它为我们提供了重要的数据存储和处理能力。为了利用这种能力,我们需要创造新的方法来高速收集和处理大量数据。与此同时,随着公司和组织(如医疗服务)意识到跨供应链和医疗保健途径的“联合思维”的重要性和价值,这就产生了对新型业务活动监控和管理方法的需求。这种新方法需要大数据解决方案来应对全球供应链上的交易量和交易速度。在本文中,我们描述了一种方法和框架,利用大数据和分析来提供决策支持框架,以支持业务流程改进,在决策支持环境中使用接近实时的流程分析。系统支持捕获和分析分层过程数据,允许在不同的组织和过程级别进行分析。各个业务单位可以执行自己的流程监控。系统中内置了事件关联机制,允许监视单个流程实例或路径。
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来源期刊
CiteScore
6.30
自引率
18.20%
发文量
99
审稿时长
12 weeks
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