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MCS: Multiple classifier system to predict the churners in the telecom industry

机译:MCS:多重分类器系统可预测电信行业的流失

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摘要

Multiple classifiers for prediction or classification has gained popularity in recent years. Ensemble Technique perform best predictions as compared to traditional classifiers. This has resulted in the experimentation with new ways of ensemble creation. This paper presents a multiple classifier system (MCS) that can outperform traditional classifiers. Experiments are performed on a benchmark Customer Churn Dataset (available on UCI repository) and a newly created dataset from a South Asian wireless telecom operator. MCS achieved accuracies of 97% and 86% on the UCI churn dataset and private dataset, respectively. MCS as compared to existing best approaches realized the best results on the private and public datasets.
机译:近年来,用于预测或分类的多个分类器已经普及。与传统分类器相比,集成技术可提供最佳预测。这导致尝试了新的合奏创建方法。本文提出了一种可以胜过传统分类器的多重分类器系统(MCS)。实验是在基准客户流失数据集(可在UCI存储库中获得)和来自南亚无线电信运营商的新创建的数据集上进行的。 MCS在UCI流失数据集和私有数据集上分别达到了97%和86%的准确性。与现有最佳方法相比,MCS在私有和公共数据集上实现了最佳结果。

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