Process querying: Enabling business intelligence through query-based process analytics

作者:

Highlights:

• A framework for designing process querying methods is proposed.

• The framework is positioned for broader Process Analytics and Business Intelligence.

• The framework is grounded in use cases from the Business Process Management field.

• The framework is informed by and validated via a systematic literature review.

• The framework structures the state of the art and points to gaps in existing research.

摘要

The volume of process-related data is growing rapidly: more and more business operations are being supported and monitored by information systems. Industry 4.0 and the corresponding industrial Internet of Things are about to generate new waves of process-related data, next to the abundance of event data already present in enterprise systems. However, organizations often fail to convert such data into strategic and tactical intelligence. This is due to the lack of dedicated technologies that are tailored to effectively manage the information on processes encoded in process models and process execution records. Process-related information is a core organizational asset which requires dedicated analytics to unlock its full potential. This paper proposes a framework for devising process querying methods, i.e., techniques for the (automated) management of repositories of designed and executed processes, as well as models that describe relationships between processes. The framework is composed of generic components that can be configured to create a range of process querying methods. The motivation for the framework stems from use cases in the field of Business Process Management. The design of the framework is informed by and validated via a systematic literature review. The framework structures the state of the art and points to gaps in existing research. Process querying methods need to address these gaps to better support strategic decision-making and provide the next generation of Business Intelligence platforms.

论文关键词:Process querying,Process management,Process analytics,Process intelligence,Process science,Business intelligence

论文评审过程:Received 11 July 2016, Revised 21 April 2017, Accepted 28 April 2017, Available online 2 May 2017, Version of Record 24 July 2017.

论文官网地址:https://doi.org/10.1016/j.dss.2017.04.011