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An effective hybrid learning system for telecommunication churn prediction

机译:一种有效的电信用户流失预测的混合学习系统

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Customer churn has emerged as a critical issue for Customer Relationship Management and customer retention in the telecommunications industry, thus churn prediction is necessary and valuable to retain the customers and reduce the losses. Moreover, high predictive accuracy and good interpretability of the results are two key measures of a classification model. More studies have shown that single model-based classification methods may not be good enough to achieve a satisfactory result. To obtain more accurate predictive results, we present a novel hybrid model-based learning system, which integrates the supervised and unsupervised techniques for predicting customer behaviour. The system combines a modified k-means clustering algorithm and a classic rule inductive technique (FOIL).Three sets of experiments were carried out on telecom datasets. One set of the experiments is for verifying that the weighted k-means clustering can lead to a better data partitioning results; the second set of experiments is for evaluating the classification results, and comparing it to other well-known modelling techniques; the last set of experiment compares the proposed hybrid-model system with several other recently proposed hybrid classification approaches. We also performed a comparative study on a set of benchmarks obtained from the UCI repository. All the results show that the hybrid model-based learning system is very promising and outperform the existing models.
机译:客户流失已成为电信行业中客户关系管理和客户保留的关键问题,因此流失预测对于保持客户并减少损失是必要且有价值的。此外,结果的高预测准确性和可解释性是分类模型的两个关键指标。更多研究表明,基于单个模型的分类方法可能不足以达到令人满意的结果。为了获得更准确的预测结果,我们提出了一种新颖的基于混合模型的学习系统,该系统集成了用于监督客户行为的监督和非监督技术。该系统结合了改进的k-means聚类算法和经典规则归纳技术(FOIL)。对电信数据集进行了三组实验。一组实验是为了验证加权k均值聚类可以导致更好的数据划分结果。第二组实验用于评估分类结果,并将其与其他众所周知的建模技术进行比较;最后一组实验将提出的混合模型系统与其他最近提出的混合分类方法进行了比较。我们还对从UCI存储库获得的一组基准进行了比较研究。所有结果表明,基于混合模型的学习系统非常有前途,并且性能优于现有模型。

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