机器学习算法在不同特征数据集上的数字化转换比较分析

D. Oreški, Igor Pihir, Dunja Višnjić
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引用次数: 0

摘要

随着机器学习与现实世界的融合越来越多,机器学习算法的应用场景也越来越复杂。所有研究领域都采用并受益于各种机器学习算法的实现。挑战在于确定哪种算法最适合解决给定的问题。这个问题在社会科学领域尤其具有挑战性。为了解决这个问题,本文探讨了一组用于商业和教育社会科学领域预测模型开发的机器学习算法。这里应用了几种机器学习算法(人工神经网络算法、k近邻算法、决策树算法)以及由元特征测量的数据集特征。在研究的实证部分,使用标准预测模型评价指标对数据集上的算法进行了比较。数据集是从教育和商业领域提取的。研究结果提供了对机器学习算法性能的见解,这取决于它们的元特征。元特征是机器学习算法在教育和商业领域性能的重要预测指标。本文开发的基于机器学习的预测模型是加速教育和商业部门数字化转型的一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Machine Learning Algorithms on Data Sets of Different Characteristics for Digital Transformation
The application scenarios for machine learning algorithms are getting more complicated as machine learning and real-world situations converge more and more. All fields of study have adopted and benefit from diverse machine learning algorithms implementation. The challenge is to determine which algorithm is best suited to solve a given problem. This problem is especially challenging in social sciences. To tackle that issue, this paper explores a group of machine learning algorithms used for predictive models’ development in social science domains of business and education. Several machine learning algorithms are applied here (algorithms of artificial neural networks, k-nearest neighbors, decision tree) along with characteristics of datasets measured by meta-features. In the empirical part of the research, algorithms are compared on the data sets using standard predictive model evaluation metrics. Data sets are extracted from the education and business domain. Research results provide insights into machine learning algorithms’ performance depending on their meta-features. Meta-features are significant predictors of machine learning algorithms’ performance in both education and business domain. Machine learning-based predictive models developed in this paper are a step forward to the acceleration of digital transformation in the education and business sector.
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