重力搜索算法在客户流失预测中的特征选择

H. Hendro, A. M. Shiddiqi
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引用次数: 0

摘要

客户流失预测是公司的一项重要战略,尤其是在电信行业。这些行业面临着客户频繁更换运营商的挑战。由于获得新客户的成本比保留现有客户的成本更高,公司在保持现有客户方面投入了相当大的努力。提高服务质量和确定客户可能终止与公司合作的时间点对于留住客户至关重要。客户流失预测旨在通过建立有效的预测模型来预测潜在的客户流失。然而,该模型的性能对不必要和不相关的特征很敏感。特征选择用于消除不相关的特征,同时强调重要的特征。本研究建议利用特征选择方法来识别重要特征,提高客户流失预测模型的准确性。我们建议采用一种最新发展的进化计算方法,即引力搜索算法(GSA)来进行特征选择方法。我们详细阐述了GSA和SVM作为分类器来寻找最优特征,提高预测精度。我们的方法比基线模型(没有特征选择)产生更高的精度和AUC分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Selection using Gravitational Search Algorithm in Customer Churn Prediction
Customer churn prediction is an essential strategy for companies, especially in telecommunications. Such industries face the challenge that customers frequently switch operators. Due to the higher cost of acquiring new customers compared to retaining existing ones, companies put considerable effort into keeping their current customers. Improving service quality and identifying the point at which customers are likely to terminate their engagement with the company are crucial in retaining customers. Customer Churn Prediction aims to predict potential customer churn by building an effective predictive model. However, the model’s performance is sensitive to unnecessary and irrelevant features. Feature selection is used to eliminate irrelevant features while emphasizing significant ones. This study suggests utilizing a feature selection method to identify significant features and enhance the accuracy of the customer churn prediction model. We propose employing a recently developed evolutionary computation method known as the gravitational search algorithm (GSA) for the feature selection approaches. We elaborate on GSA and the SVM as the classifier to find the optimum features and to improve the prediction accuracy. Our method produced higher precision and AUC scores than the baseline model (without feature selection).
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