基于ALBA的电信行业客户流失理解分析

Sajjad Jamil, Asifullah Khan
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引用次数: 7

摘要

客户流失分析正受到企业界的极大关注,尤其是在电信行业,以帮助创造更多收入。这就提出了对客户流失预测系统建模的需求,该系统不仅要准确,而且要包含可理解性和合理性。此外,领域专家识别客户流失的驱动因素以及确定这些驱动因素之间的相关性的判断能力也起着非常重要的作用。对于利益相关者或商人来说,预测客户流失的主要驱动因素以增加利润是非常重要的。在本文中,我们使用一种称为主动学习方法(ALBA)的技术,结合两种规则归纳方法,Decision Tree和Ripper来开发一个客户流失预测模型,该模型不仅准确,而且具有可理解性和合理性。ALBA是一种基于支持向量机(SVM)风格的规则提取技术,称为主动学习。基本上,这种方法被用作实例生成器。该方法首先通过将SVM预测标签替换为原始标签来去除数据中的噪声,然后在支持向量附近的噪声区域生成人工实例。这些新生成的实例并不是类均衡的。为此,我们使用SMOTE使它们保持平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn comprehension analysis for telecommunication industry using ALBA
Customer churn analysis is getting immense attention from the business community, especially in the telecommunication sector, to help in generating more revenue. This raises the need for modeling a churn prediction system that is not only accurate but also encompasses comprehensibility and justifiability. Also the judgment ability of the domain expert to identify the drivers of churn and determine a correlation between those drivers plays a very important role. For the stakeholder or businessman, it is very important to predict the main drivers of churn to increase the profit. In this paper, we use a technique called Active Learning Based Approach (ALBA), with two rule induction methods, Decision Tree and Ripper to develop a churn prediction model that is not only accurate but also yields comprehensibility and justifiability. ALBA is a rule extraction technique based on a flavor of Support Vector Machine (SVM) called Active Learning. Basically, this approach is used as instance generator. Using this approach, we first remove noise from the data by replacing the SVM predicted labels with the original labels and secondly, we generate artificial instances in the noisy area near support vectors. These newly generated instances are not class-wise balanced. For this purpose, we use SMOTE to make them balanced.
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