CONDA-PM -- A Systematic Review and Framework for Concept Drift Analysis
in Process Mining
- URL: http://arxiv.org/abs/2009.05438v1
- Date: Tue, 8 Sep 2020 15:39:09 GMT
- Title: CONDA-PM -- A Systematic Review and Framework for Concept Drift Analysis
in Process Mining
- Authors: Ghada Elkhawaga, Mervat Abuelkheir, Sherif I. Barakat, Alaa M. Riad
and Manfred Reichert
- Abstract summary: Concept drift analysis is concerned with studying how a business process changes.
There exists no comprehensive framework for analysing concept drift types, affected process perspectives, and levels of a business process.
This article proposes the CONcept Drift Analysis in Process Mining (CONDA-PM) framework describing phases and requirements of a concept drift analysis approach.
- Score: 2.531156266686649
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Business processes evolve over time to adapt to changing business
environments. This requires continuous monitoring of business processes to gain
insights into whether they conform to the intended design or deviate from it.
The situation when a business process changes while being analysed is denoted
as Concept Drift. Its analysis is concerned with studying how a business
process changes, in terms of detecting and localising changes and studying the
effects of the latter. Concept drift analysis is crucial to enable early
detection and management of changes, that is, whether to promote a change to
become part of an improved process, or to reject the change and make decisions
to mitigate its effects. Despite its importance, there exists no comprehensive
framework for analysing concept drift types, affected process perspectives, and
granularity levels of a business process. This article proposes the CONcept
Drift Analysis in Process Mining (CONDA-PM) framework describing phases and
requirements of a concept drift analysis approach. CONDA-PM was derived from a
Systematic Literature Review (SLR) of current approaches analysing concept
drift. We apply the CONDA-PM framework on current approaches to concept drift
analysis and evaluate their maturity. Applying CONDA-PM framework highlights
areas where research is needed to complement existing efforts.
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