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Year 2022, Volume: 06 Issue: 2, 53 - 60, 31.12.2022
https://doi.org/10.34110/forecasting.1185545

Abstract

References

  • [1] R. C. Ramona, “The Importance Of Entrepreneurs In The ‘New Economy’”, Managerial Challenges of the Contemporary Society, Issue 2, pp. 265-269, Jun. 2011.
  • [2] R. W. Fairlie and W. Holleran, “Entrepreneurship training, risk aversion and other personality traits: Evidence from a random experiment”, Journal of Economic Psychology, vol. 33, pp. 366-378, Apr. 2012.
  • [3] S. P. Kerr, W. R. Kerr and M. Dalton, “Risk attitudes and personality traits of entrepreneurs and venture team members“, Proceedings of the National Academy of Sciences of the United States of America, vol. 116, pp. 17712-17716, Sep. 2019.
  • [4] M. Brandt and S. STEFÁNSSON, “The personality venture capitalists look for in an entrepreneur: An artificial intelligence approach to personality analysis”, M. Sci. thesis, KTH Royal Institute of Technology, Stockholm, Sweden, Jun. 2018.
  • [5] M. Caliendo, F. Fossen and A. S. Kritikos, “Personality characteristics and the decisions to become and stay self-employed”, Small Business Economics, vol. 42, pp. 787-814, Oct. 2013.
  • [6] F. U. Salmony and D. K. Kanbach, “Personality trait differences across types of entrepreneurs: a systematic literature review”, Review of Managerial Science, vol. 16, pp. 713-749, Apr. 2021.
  • [7] M. Castillo-Palacio, R. M. Batista-Canino, A. Zuñiga-Collazos, “The Relationship between Culture and Entrepreneurship: From Cultural Dimensions of GLOBE Project”, Scientific Annals Of Economics and Business, vol. 67, pp. 517-532, Mar. 2020.
  • [8] C. J. Boudreaux, B. N. Nikolaev, and P. Klein, “Socio-cognitive traits and entrepreneurship: The moderating role of economic institutions”, Journal of Business Venturing, vol. 34, pp.178-196, Jan. 2019.
  • [9] D. V. Moudrý and P. Thaichon, “Enrichment for retail businesses: How female entrepreneurs and masculine traits enhance business success”, Journal of Retailing and Consumer Services, vol. 54, May 2020.
  • [10] B. Graham and K. Bonner, “One size fits all? Using machine learning to study heterogeneity and dominance in the determinants of early-stage entrepreneurship”, Journal of Business Research, vol. 152, pp.42-59, Nov. 2022.
  • [11] M. G. Celbiş, “A machine learning approach to rural entrepreneurship”, Papers in Regional Science, vol. 100, pp. 1079-1104, Jan. 2021.
  • [12] U. Sharma and N. Manchanda, “Predicting and Improving Entrepreneurial Competency in University Students using Machine Learning Algorithms”, in 10th International Conference on Cloud Computing, Data Science & Engineering (Confluence), 2020, pp. 305-309.
  • [13] N. Manchanda and U. Sharma (2019) [Online]. Available: https://www.kaggle.com/datasets/namanmanchanda/entrepreneurial-competency-in-university-students
  • [14] Y. Sun, A. K. C. Wong, and M. S. Kamel, “Classification of Imbalanced Data: A Review”, International Journal of Pattern Recognition and Artificial Intelligence, vol. 23, pp. 687-719, 2009.
  • [15] A. Somasundaram and U. S. Reddy, “Data Imbalance: Effects and Solutions for Classification of Large and Highly Imbalanced Data”, in 1st International Conference on Research in Engineering, Computers and Technology (ICRECT 2016), 2016.
  • [16] H. Ali et al., “A review on data preprocessing methods for class imbalance problem”, International Journal of Engineering &Technology, vol. 8, pp. 390-397, 2019.
  • [17] N. V. Chawla et al., “SMOTE: Synthetic Minority Over-sampling Technique”, Journal of Artificial Intelligence Research, vol. 16, pp. 321–357, Jun. 2002.
  • [18] R. Blagus and L. Lusa, “SMOTE for high-dimensional class-imbalanced data”, in 11th International Conference on Machine Learning and Applications Machine Learning and Applications, 2012, paper 2, pp. 89-94.
  • [19] Md. A. Sahid et al., “Effect of Imbalance Data Handling Techniques to Improve the Accuracy of Heart Disease Prediction using Machine Learning and Deep Learning”, in IEEE Region 10 Symposium (TENSYMP), 2022.
  • [20] M.V. Joshi, V. Kumar, and R.C. Agarwal, “Evaluating Boosting Algorithms to Classify Rare Classes: Comparison and Improvements”, in Proceedings 2001 IEEE International Conference on Data Mining, 2001, pp. 257-264.

The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students

Year 2022, Volume: 06 Issue: 2, 53 - 60, 31.12.2022
https://doi.org/10.34110/forecasting.1185545

Abstract

As of today, entrepreneurs and entrepreneurship are considered to be the integral parts of the economic and technological advancements. Entrepreneurs are promoted in many countries because of their high return on investment opportunities both in terms of income and new inventions. Numerous studies prove that entrepreneurs have many traits in common and these common traits can correlate with each other. Based on these common traits, potential entrepreneurs can be predicted, current entrepreneurs can be improved by realising their weak sides and the ones who wish to be entrepreneurs can be provided with insights. A machine learning approach can light the way for a better rewarding future for entrepreneurship, helping these goals significantly. There exist several studies for the prediction of entrepreneurial competency with the use of machine learning algorithms. Most machine learning methods perform better accuracy and F1-score imbalanced data instead in imbalanced data. This study focuses on utilizing imbalanced class handling methods to increase prediction performance. Random Oversampling, Random Undersampling, SMOTE, and NearMiss methods are used to handling imbalanced data for this purpose in this study. The performance of the machine learning algorithms with Imbalanced Data Handling methods is compared with the machine learning algorithms without these methods. The comparison shows that with the handling imbalanced data methods machine learning algorithms perform better.

References

  • [1] R. C. Ramona, “The Importance Of Entrepreneurs In The ‘New Economy’”, Managerial Challenges of the Contemporary Society, Issue 2, pp. 265-269, Jun. 2011.
  • [2] R. W. Fairlie and W. Holleran, “Entrepreneurship training, risk aversion and other personality traits: Evidence from a random experiment”, Journal of Economic Psychology, vol. 33, pp. 366-378, Apr. 2012.
  • [3] S. P. Kerr, W. R. Kerr and M. Dalton, “Risk attitudes and personality traits of entrepreneurs and venture team members“, Proceedings of the National Academy of Sciences of the United States of America, vol. 116, pp. 17712-17716, Sep. 2019.
  • [4] M. Brandt and S. STEFÁNSSON, “The personality venture capitalists look for in an entrepreneur: An artificial intelligence approach to personality analysis”, M. Sci. thesis, KTH Royal Institute of Technology, Stockholm, Sweden, Jun. 2018.
  • [5] M. Caliendo, F. Fossen and A. S. Kritikos, “Personality characteristics and the decisions to become and stay self-employed”, Small Business Economics, vol. 42, pp. 787-814, Oct. 2013.
  • [6] F. U. Salmony and D. K. Kanbach, “Personality trait differences across types of entrepreneurs: a systematic literature review”, Review of Managerial Science, vol. 16, pp. 713-749, Apr. 2021.
  • [7] M. Castillo-Palacio, R. M. Batista-Canino, A. Zuñiga-Collazos, “The Relationship between Culture and Entrepreneurship: From Cultural Dimensions of GLOBE Project”, Scientific Annals Of Economics and Business, vol. 67, pp. 517-532, Mar. 2020.
  • [8] C. J. Boudreaux, B. N. Nikolaev, and P. Klein, “Socio-cognitive traits and entrepreneurship: The moderating role of economic institutions”, Journal of Business Venturing, vol. 34, pp.178-196, Jan. 2019.
  • [9] D. V. Moudrý and P. Thaichon, “Enrichment for retail businesses: How female entrepreneurs and masculine traits enhance business success”, Journal of Retailing and Consumer Services, vol. 54, May 2020.
  • [10] B. Graham and K. Bonner, “One size fits all? Using machine learning to study heterogeneity and dominance in the determinants of early-stage entrepreneurship”, Journal of Business Research, vol. 152, pp.42-59, Nov. 2022.
  • [11] M. G. Celbiş, “A machine learning approach to rural entrepreneurship”, Papers in Regional Science, vol. 100, pp. 1079-1104, Jan. 2021.
  • [12] U. Sharma and N. Manchanda, “Predicting and Improving Entrepreneurial Competency in University Students using Machine Learning Algorithms”, in 10th International Conference on Cloud Computing, Data Science & Engineering (Confluence), 2020, pp. 305-309.
  • [13] N. Manchanda and U. Sharma (2019) [Online]. Available: https://www.kaggle.com/datasets/namanmanchanda/entrepreneurial-competency-in-university-students
  • [14] Y. Sun, A. K. C. Wong, and M. S. Kamel, “Classification of Imbalanced Data: A Review”, International Journal of Pattern Recognition and Artificial Intelligence, vol. 23, pp. 687-719, 2009.
  • [15] A. Somasundaram and U. S. Reddy, “Data Imbalance: Effects and Solutions for Classification of Large and Highly Imbalanced Data”, in 1st International Conference on Research in Engineering, Computers and Technology (ICRECT 2016), 2016.
  • [16] H. Ali et al., “A review on data preprocessing methods for class imbalance problem”, International Journal of Engineering &Technology, vol. 8, pp. 390-397, 2019.
  • [17] N. V. Chawla et al., “SMOTE: Synthetic Minority Over-sampling Technique”, Journal of Artificial Intelligence Research, vol. 16, pp. 321–357, Jun. 2002.
  • [18] R. Blagus and L. Lusa, “SMOTE for high-dimensional class-imbalanced data”, in 11th International Conference on Machine Learning and Applications Machine Learning and Applications, 2012, paper 2, pp. 89-94.
  • [19] Md. A. Sahid et al., “Effect of Imbalance Data Handling Techniques to Improve the Accuracy of Heart Disease Prediction using Machine Learning and Deep Learning”, in IEEE Region 10 Symposium (TENSYMP), 2022.
  • [20] M.V. Joshi, V. Kumar, and R.C. Agarwal, “Evaluating Boosting Algorithms to Classify Rare Classes: Comparison and Improvements”, in Proceedings 2001 IEEE International Conference on Data Mining, 2001, pp. 257-264.
There are 20 citations in total.

Details

Primary Language English
Subjects Mathematical Sciences
Journal Section Articles
Authors

Murat Şimşek 0000-0002-8648-3693

Ahmet Said Daş 0000-0001-5153-7172

Publication Date December 31, 2022
Submission Date October 7, 2022
Acceptance Date November 1, 2022
Published in Issue Year 2022 Volume: 06 Issue: 2

Cite

APA Şimşek, M., & Daş, A. S. (2022). The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students. Turkish Journal of Forecasting, 06(2), 53-60. https://doi.org/10.34110/forecasting.1185545
AMA Şimşek M, Daş AS. The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students. TJF. December 2022;06(2):53-60. doi:10.34110/forecasting.1185545
Chicago Şimşek, Murat, and Ahmet Said Daş. “The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students”. Turkish Journal of Forecasting 06, no. 2 (December 2022): 53-60. https://doi.org/10.34110/forecasting.1185545.
EndNote Şimşek M, Daş AS (December 1, 2022) The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students. Turkish Journal of Forecasting 06 2 53–60.
IEEE M. Şimşek and A. S. Daş, “The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students”, TJF, vol. 06, no. 2, pp. 53–60, 2022, doi: 10.34110/forecasting.1185545.
ISNAD Şimşek, Murat - Daş, Ahmet Said. “The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students”. Turkish Journal of Forecasting 06/2 (December 2022), 53-60. https://doi.org/10.34110/forecasting.1185545.
JAMA Şimşek M, Daş AS. The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students. TJF. 2022;06:53–60.
MLA Şimşek, Murat and Ahmet Said Daş. “The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students”. Turkish Journal of Forecasting, vol. 06, no. 2, 2022, pp. 53-60, doi:10.34110/forecasting.1185545.
Vancouver Şimşek M, Daş AS. The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students. TJF. 2022;06(2):53-60.

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