D 2021

TDABC and Estimation of Time Drivers Using Process Mining

HALAŠKA, Michal and Roman ŠPERKA

Basic information

Original name

TDABC and Estimation of Time Drivers Using Process Mining

Authors

HALAŠKA, Michal (203 Czech Republic, belonging to the institution) and Roman ŠPERKA (703 Slovakia, guarantor, belonging to the institution)

Edition

Singapore, Smart Innovation, Systems and Technologies, p. 489-499, 11 pp. 2021

Publisher

Springer

Other information

Language

English

Type of outcome

Stať ve sborníku

Field of Study

50204 Business and management

Country of publisher

Singapore

Confidentiality degree

není předmětem státního či obchodního tajemství

Publication form

printed version "print"

References:

RIV identification code

RIV/47813059:19520/21:A0000203

Organization unit

School of Business Administration in Karvina

ISSN

Keywords in English

Process mining; TDABC; Costing systems; Time drivers; Loan process; Enterprise

Tags

International impact, Reviewed
Změněno: 5/8/2021 11:13, doc. RNDr. Ing. Roman Šperka, Ph.D.

Abstract

V originále

Costing systems play a crucial role in many managerial decisions; thus, it is crucial that costing systems provide appropriate information. Time-driven activity-based costing systems (TDABC) are successors of activity-based costing systems (ABC). ABCs were created in order to address shortcomings of traditional costing systems, while TDABCs were created to address mostly implementational shortcomings of ABCs. In this research, we focus on the advantages of integration of process mining (PM) and TDABC for estimation of activity durations used as time drivers for allocation of overhead costs. Thus, we have stated two research questions: (1) Can PM be used for estimation of time drivers? and (2) What are the benefits of using PM for the estimation of time drivers? To address these questions, we present a proof of concept, where we analyze two real-world datasets representing loan application process. Firstly, we clean both datasets, and then, we use PM techniques to discover process models representing the process. We show that PM can be used for time estimation and time drivers’ determination and that there are potential benefits to this approach. Furthermore, we discuss the possibility of using actual times instead of estimates.