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DOSTÁL, P. PAVELKOVÁ, D.
Original Title
Company Performance Measurement with Use of Genetic Algorithm
Type
conference paper
Language
English
Original Abstract
This paper deals with measurement of company performance. Different methods may be used for measuring of performance of companies. In this article, the authors pay attention to the use of value-based methods in the measuring of performance, like the economic value added concept (EVA); and the traditional measuring of performance and management of companies with the use of financial analysis indicators. This traditional approach is preferred by managers, while the use of EVA is often restrained due to a lack of input information or difficulties in calculation. In the course of research, the authors inquire into a question whether a relationship between the value of EVA and the selected indicators of traditional financial analysis may be found. In order to prove that, the authors employ genetic algorithms for clustering into different groups of performance and they embark on testing of linear dependence. They show that, to a certain degree of probability, this relationship may be proved with selected parameters. Outcomes of this research may be used for performance evaluation in the business practice. Conclusions of this research also may be exploited in the construction of creditworthiness and bankruptcy prediction models.
Keywords
Performance, measurement, financial indicators, economic value added, clustering, generic algorithm
Authors
DOSTÁL, P.; PAVELKOVÁ, D.
RIV year
2012
Released
20. 9. 2012
Publisher
WSEAS Press
ISBN
978-1-61804-124-1
Book
Advanced Finance and Auditing
Edition
1
Edition number
Pages from
128
Pages to
133
Pages count
384
BibTex
@inproceedings{BUT94274, author="Petr {Dostál} and Drahomíra {Pavelková}", title="Company Performance Measurement with Use of Genetic Algorithm", booktitle="Advanced Finance and Auditing", year="2012", series="1", number="1", pages="128--133", publisher="WSEAS Press", isbn="978-1-61804-124-1" }