面向远程营销成功分类的机器学习方法与模型绩效评价

Pub Date : 2022-01-01 DOI:10.4018/ijban.298014
F. Koçoğlu, Şakir Esnaf
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引用次数: 0

摘要

到目前为止,数据挖掘、机器学习和人工智能等多种方法已被用于从庞大而重要的数据资源中获得最佳评估。深度学习是其中一种方法,是人工神经网络的扩展版本。在本研究的范围内,开发了一个模型,用不同的机器学习算法,特别是深度学习算法,对远程营销的成功进行分类。Naive Bayes、C5.0、极限学习机和深度学习算法已用于建模。为了检验类标签分布对模型成功率的影响,使用了合成少数派过采样技术。结果显示了深度学习和决策树算法的成功。当数据集不平衡时,深度学习算法在灵敏度方面表现更好。在所有模型中,C5.0算法在准确性、精度和F分数方面都取得了最佳性能。
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Machine Learning Approach and Model Performance Evaluation for Tele-Marketing Success Classification
Up to the present, various methods such as Data Mining, Machine Learning, and Artificial Intelligence have been used to get the best assess from huge and important data resource. Deep Learning, one of these methods, is extended version of Artificial Neural Networks. Within the scope of this study, a model has been developed to classify the success of tele-marketing with different machine learning algorithms especially with Deep Learning algorithm. Naïve Bayes, C5.0, Extreme Learning Machine and Deep Learning algorithms have been used for modelling. To examine the effect of class label distribution on model success, Synthetic Minority Oversampling Technique have been used. The results have revealed the success of Deep Learning and Decision Trees algorithms. When the data set was not balanced, the Deep Learning algorithm performed better in terms of sensitivity. Among all models, the best performance in terms of accuracy, precision and F-score have been achieved with the C5.0 algorithm.
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