Spreadsheets for business process management

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Detalles Bibliográficos
Publicado en:Business Process Management Journal vol. 24, no. 1 (2018), p. 105-127
Autor principal: Wil van der Aalst
Publicado:
Emerald Group Publishing Limited
Materias:
Acceso en línea:Citation/Abstract
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Resumen:PurposeProcess mining provides a generic collection of techniques to turn event data into valuable insights, improvement ideas, predictions, and recommendations. This paper uses spreadsheets as a metaphor to introduce process mining as an essential tool for data scientists and business analysts. The purpose of this paper is to illustrate that process mining can do with events what spreadsheets can do with numbers.Design/methodology/approachThe paper discusses the main concepts in both spreadsheets and process mining. Using a concrete data set as a running example, the different types of process mining are explained. Where spreadsheets work with numbers, process mining starts from event data with the aim to analyze processes.FindingsDifferences and commonalities between spreadsheets and process mining are described. Unlike process mining tools like ProM, spreadsheets programs cannot be used to discover processes, check compliance, analyze bottlenecks, animate event data, and provide operational process support. Pointers to existing process mining tools and their functionality are given.Practical implicationsEvent logs and operational processes can be found everywhere and process mining techniques are not limited to specific application domains. Comparable to spreadsheet software widely used in finance, production, sales, education, and sports, process mining software can be used in a broad range of organizations.Originality/valueThe paper provides an original view on process mining by relating it to the spreadsheets. The value of spreadsheet-like technology tailored toward the analysis of behavior rather than numbers is illustrated by the over 20 commercial process mining tools available today and the growing adoption in a variety of application domains.
ISSN:1463-7154
1758-4116
1355-2503
DOI:10.1108/BPMJ-10-2016-0190
Fuente:ABI/INFORM Global