不平衡数据集处理方法对大学生创业胜任力预测的影响

Murat Simsek, Ahmet Said Daş
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摘要

时至今日,企业家和企业家精神被认为是经济和技术进步的组成部分。企业家在许多国家受到鼓励,因为他们在收入和新发明方面的投资机会回报高。大量的研究证明,企业家有许多共同的特征,这些共同的特征可以相互关联。基于这些共同特征,可以预测潜在的企业家,可以通过认识现有企业家的弱点来提高他们,可以为希望成为企业家的人提供洞察力。机器学习方法可以为创业带来更好的回报,极大地帮助实现这些目标。目前已有几项利用机器学习算法预测创业能力的研究。大多数机器学习方法在不平衡数据中表现出更好的准确性和f1分数。本研究的重点是利用不平衡类处理方法来提高预测性能。本研究采用随机过采样、随机欠采样、SMOTE和NearMiss方法来处理不平衡数据。比较了采用不平衡数据处理方法的机器学习算法与机器学习算法的性能。以正确率、精密度、召回率、F1-Score为性能参数进行比较。比较表明,使用机器学习算法处理不平衡数据集方法可以显著提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Effect of Handling Imbalanced Datasets Methods on Prediction of Entrepreneurial Competency in University Students
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. Comparisons were made using accuracy, precision, recall, F1-Score as performance parameters. The comparison shows a noticeable performance increase using machine learning algorithms with handling imbalanced dataset methods.
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