Data Mining in Entrepreneurial Competencies Diagnosis

The aim of the paper is to diagnose the entrepreneurship competency levels among students to identify differences in competencies and their levels regarding gender, material status, and professional situation. In addition, the goal of the analysis is to indicate the competencies that need to be stre...

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Main Authors: Marta Czyzewska, Teresa Mroczek
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Education Sciences
Subjects:
Online Access:https://www.mdpi.com/2227-7102/10/8/196
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spelling doaj-1088eb24699b47f78b578551d7404f9c2020-11-25T02:56:32ZengMDPI AGEducation Sciences2227-71022020-07-011019619610.3390/educsci10080196Data Mining in Entrepreneurial Competencies DiagnosisMarta Czyzewska0Teresa Mroczek1Department of Economics and Economic Policy, Pedagogical University of Krakow, 30-084 Kraków, PolandDepartment of Artificial Intelligence, University of Information Technology and Management, 35-225 Rzeszów, PolandThe aim of the paper is to diagnose the entrepreneurship competency levels among students to identify differences in competencies and their levels regarding gender, material status, and professional situation. In addition, the goal of the analysis is to indicate the competencies that need to be strengthened among individual groups of students. The research was conducted using a questionnaire by The European Entrepreneurship Competence (EntreComp) framework that was sent to students at the Pedagogical University of Cracow and the Rzeszow University. The rule induction method enabled us to discover dependencies that were not obvious among different competencies of respondents and their status. The research revealed that the surveyed women had completely different competencies than men. Good financial status has a positive impact on the self-assessment of competencies and worse-cause difficulties in assessing business ideas. Unemployed students need stimulation to take action, seek funding, share ideas, and protect them. Students running their businesses are able to identify market needs. The results revealed the following implications: It is important to verify the EntreComp methodology to examine how different groups are evaluating their entrepreneurial competencies; the data mining technique enables discover of new knowledge based on regularities hidden in data; and the results can be used to tailor special teaching programs for developing skills that individual subgroups lack.https://www.mdpi.com/2227-7102/10/8/196data miningrule inductionEntreCompentrepreneurshipentrepreneurial competencies
collection DOAJ
language English
format Article
sources DOAJ
author Marta Czyzewska
Teresa Mroczek
spellingShingle Marta Czyzewska
Teresa Mroczek
Data Mining in Entrepreneurial Competencies Diagnosis
Education Sciences
data mining
rule induction
EntreComp
entrepreneurship
entrepreneurial competencies
author_facet Marta Czyzewska
Teresa Mroczek
author_sort Marta Czyzewska
title Data Mining in Entrepreneurial Competencies Diagnosis
title_short Data Mining in Entrepreneurial Competencies Diagnosis
title_full Data Mining in Entrepreneurial Competencies Diagnosis
title_fullStr Data Mining in Entrepreneurial Competencies Diagnosis
title_full_unstemmed Data Mining in Entrepreneurial Competencies Diagnosis
title_sort data mining in entrepreneurial competencies diagnosis
publisher MDPI AG
series Education Sciences
issn 2227-7102
publishDate 2020-07-01
description The aim of the paper is to diagnose the entrepreneurship competency levels among students to identify differences in competencies and their levels regarding gender, material status, and professional situation. In addition, the goal of the analysis is to indicate the competencies that need to be strengthened among individual groups of students. The research was conducted using a questionnaire by The European Entrepreneurship Competence (EntreComp) framework that was sent to students at the Pedagogical University of Cracow and the Rzeszow University. The rule induction method enabled us to discover dependencies that were not obvious among different competencies of respondents and their status. The research revealed that the surveyed women had completely different competencies than men. Good financial status has a positive impact on the self-assessment of competencies and worse-cause difficulties in assessing business ideas. Unemployed students need stimulation to take action, seek funding, share ideas, and protect them. Students running their businesses are able to identify market needs. The results revealed the following implications: It is important to verify the EntreComp methodology to examine how different groups are evaluating their entrepreneurial competencies; the data mining technique enables discover of new knowledge based on regularities hidden in data; and the results can be used to tailor special teaching programs for developing skills that individual subgroups lack.
topic data mining
rule induction
EntreComp
entrepreneurship
entrepreneurial competencies
url https://www.mdpi.com/2227-7102/10/8/196
work_keys_str_mv AT martaczyzewska datamininginentrepreneurialcompetenciesdiagnosis
AT teresamroczek datamininginentrepreneurialcompetenciesdiagnosis
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