Klasifikasi Nasabah Potensial menggunakan Algoritma Ensemble Least Square Support Vector Machine dengan AdaBoost

Firman Aziz, Benny Leonard Enrico Panggabean
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Abstract

In the era of business and economics that are interconnected with each other and competition between companies in seeking market share so that there will be an increase, especially in the number of customers, especially deposit customers, financial institutions and other companies are increasingly realizing the importance of understanding and identifying potential customers correctly to get potential customers. customers subscribe to deposits. Potential customer classification is a strategic approach that allows financial institutions to identify potential customers who have the potential to subscribe to deposits. With a deeper understanding of the characteristics and needs of potential customers, financial institutions can direct marketing resources more effectively, increase marketing efforts, and increase the conversion of potential customers to active customers. The aim of this research is to develop and test the Ensemble Least Square Support Vector Machine model with AdaBoost in classifying potential customers which can increase accuracy in identifying potential customers who have the potential to subscribe to deposits. The research results showed that this method achieved an accuracy of 95.15%, a sensitivity of 92.93%, and a specificity of 97.61%. In comparison with single Support Vector Machine and Least Squares Support Vector Machine models, the Ensemble Least Squares Support Vector Machine outperforms both in terms of accuracy.
使用集合最小平方支持向量机算法和 AdaBoost 进行潜在客户分类
在商业和经济相互关联的时代,企业之间为寻求市场份额而展开竞争,从而增加客户数量,尤其是存款客户数量,金融机构和其他公司日益认识到正确理解和识别潜在客户以获得潜在客户存款的重要性。潜在客户分类是一种战略方法,可以让金融机构识别出有潜力认购存款的潜在客户。通过深入了解潜在客户的特征和需求,金融机构可以更有效地引导营销资源,加大营销力度,提高潜在客户向活跃客户的转化率。本研究的目的是开发并测试利用 AdaBoost 对潜在客户进行分类的集合最小平方支持向量机模型,以提高识别有潜力认购存款的潜在客户的准确性。研究结果表明,该方法的准确率为 95.15%,灵敏度为 92.93%,特异性为 97.61%。与单一支持向量机和最小二乘支持向量机相比,集合最小二乘支持向量机在准确性方面优于两者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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