MINING TELECOMMUNICATION DATA TO PREDICT CUSTOMER CHURN WITH FILTER-BASED FEATURE USING WEKA

Ahmad Khalaf, Mohamed Dweib, Yousef S. Abuzir
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Abstract

It is important for companies operating in the telecom field to recruit new customers while retaining their customers and avoiding losing them. There are many reasons why customers cancel their contracts, such as poor service experiences, or changing personal situations. In the past decades, the use of data mining methods for decision-making has increased in several areas, and the successful use of data mining methods has shown great advantages in many areas.This paper is aiming to build a classification model, to improve the customer churn prediction with help of feature selection techniques that focus on the most factors that affect this issue.The process of selecting influencing factors plays an important role in the data mining process, the database contains several factors that are not relevant to an effective classification process.After feature selection, this paper performs three different classifiers on the dataset to bring out the best results and compare them.The IBM Sample Data Sets was used in this technique which has 7043 user’s entries and 21 features. The performance was evaluated using Accuracy, Precision, Recall rate, and Confusion Matrix.
使用weka挖掘电信数据,利用基于过滤器的特性预测客户流失
对于电信行业的企业来说,重要的是在留住客户和避免流失的同时,吸引新客户。客户取消合同的原因有很多,比如糟糕的服务体验,或者个人情况的变化。在过去的几十年中,数据挖掘方法用于决策的应用在多个领域有所增加,数据挖掘方法的成功应用在许多领域显示出巨大的优势。本文旨在建立一个分类模型,通过特征选择技术来改进客户流失预测,该技术关注影响该问题的大多数因素。影响因素的选择过程在数据挖掘过程中起着重要的作用,数据库中包含了一些与有效分类过程无关的因素。在特征选择之后,本文对数据集执行三种不同的分类器,得出最佳分类结果并进行比较。该技术中使用了IBM样本数据集,其中包含7043个用户条目和21个特性。使用准确性、精密度、召回率和混淆矩阵来评估性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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