Business process models for visually navigating process execution data

Gulden, Jens and Attfield, Simon ORCID logoORCID: https://orcid.org/0000-0001-9374-2481 (2015) Business process models for visually navigating process execution data. In: 4th International Workshop on Theory and Application of Visualizations and Human-centric Aspects in Processes (TAProViz2015), 31 August 2015, Innsbruck, Austria. . [Conference or Workshop Item]

[img] PDF - Final accepted version (with author's formatting)
Restricted to Repository staff and depositor only

Download (2MB) |

Abstract

To analyze large amounts of data, visual analysis tools offer
filter mechanisms for drilling down into multi-dimensional information spaces, or slicing and dicing them according to given criteria. This paper introduces an analysis approach for navigating multi-dimensional process instance execution logs based on business process models. By visually selecting parts of a business process model, a set of available log entries is filtered to include only those entries that result from execution instances of the selected process branches. Using this approach allows to exploratively navigate through process execution logs and analyze them according to the causal-temporal relationships encoded in the underlying business process model. The business process models used by the approach can either be created using model editors, or be statistically derived using process mining techniques. We exemplify our approach with a prototypical implementation.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Workshop associated with the 13th Conference of Business Process Management (BPM 2015)
Keywords (uncontrolled): Visual analysis, business analysis, business intelligence, business process modeling, process mining, big data
Research Areas: A. > School of Science and Technology > Computer Science
Item ID: 17382
Notes on copyright: Access to full text restricted pending copyright check.
Depositing User: Simon Attfield
Date Deposited: 18 Aug 2015 11:53
Last Modified: 29 Nov 2022 22:39
URI: https://eprints.mdx.ac.uk/id/eprint/17382

Actions (login required)

View Item View Item

Statistics

Activity Overview
6 month trend
8Downloads
6 month trend
453Hits

Additional statistics are available via IRStats2.