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THE IMPACT OF FEATURE SELECTION: A DATA-MINING APPLICATION IN DIRECT MARKETING

机译:功能选择的影响:直接营销中的数据挖掘应用

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摘要

The capability of identifying customers who are more likely to respond to a product is an important issue in direct marketing. This paper investigates the impact of feature selection on predictive models which predict reordering demand of small and medium-sized enterprise customers in a large online job-advertising company. Three well-known feature subset selection techniques in data mining, namely correlation-based feature selection (CFS), subset consistency (SC) and symmetrical uncertainty (SU), are applied in this study. The results show that the predictive models using SU outperform those without feature selection and those with the CFS and SC feature subset evaluators. This study has examined and demonstrated the significance of applying the feature-selection approach to enhance the accuracy of predictive modelling in a direct-marketing context.
机译:识别更可能对产品做出响应的客户的能力是直接营销中的重要问题。本文研究了特征选择对预测模型的影响,该预测模型预测了大型在线招聘广告公司中小型企业客户的重新排序需求。这项研究中使用了三种众所周知的数据挖掘特征子集选择技术,即基于相关的特征选择(CFS),子集一致性(SC)和对称不确定性(SU)。结果表明,使用SU的预测模型优于不使用特征选择的模型以及使用CFS和SC特征子集评估器的模型。这项研究已经检查并证明了使用特征选择方法来提高直销环境中预测模型的准确性的重要性。

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