基于自适应增强支持向量机的潜在直销消费者识别研究

A. Lawi, Ali Akbar Velayaty, Z. Zainuddin
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引用次数: 21

摘要

通过非常大的数据来识别潜在的直接营销消费者是一项困难且不可能手动完成的任务。因此,机器学习方法需要帮助分析数据,以帮助确定营销策略策略。本文研究了基于Adaboost算法的向量机支持方法,对大型银行数据营销中的直销潜在客户进行分类。adaboost算法旨在建立一个比单一分类器生成的模型更好的模型。数据来自UCI机器学习存储库。总共处理了9280个数据,属性个数为20个类和1个目标类。训练数据和测试数据分为70%和30%。这种分类预测了存款认购的前景。结果表明,采用Adaboost算法的SVM方法比普通SVM方法准确率提高了95.07%,灵敏度提高了91.65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On identifying potential direct marketing consumers using adaptive boosted support vector machine
Identifying potential consumers for direct marketing to very large data is a difficult and impossible task to do manually. Therefore, the machine learning approach needs to help analyze the data to contribute in determining the marketing strategy policy. In this paper, vector machine support methods using the Adaboost algorithm are investigated to classify potential customers for direct marketing of large bank data marketing. The adaboost algorithm aims to build a better model than the model generated from a single classifier. Data obtained from UCI machine learning repository. Total data is processed as many as 9280 data with the number of attributes of 20 classes and 1 target class. Training data and test data are divided into 70% and 30%. This classification predicts the prospects for a deposit subscription. The results show that the SVM method using Adaboost algorithm obtained accuracy is 95.07% and the sensitivity is 91.65% higher than the ordinary SVM approach.
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