一种高效的概率估计决策树后处理方法挖掘具有多类别客户的企业最优盈利知识

J. Muneiah, C. SubbaRao
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引用次数: 1

摘要

企业通常将客户按盈利程度从高到低进行分类,如C1、C2、…Cn。一般来说,代表类别Cn的客户是零利润的,因为他们迁移到竞争对手那里。他们被称为“流失者”(或“流失者”),是造成企业巨额亏损的主要原因。而其他中介阶层的客户则不情愿,不同程度地提供微不足道的利润,导致不确定性。各种数据挖掘模型(如决策树等)都是基于客户的配置文件构建的,它们仅限于将客户分类为属性者或非属性者,并且不能提供有利可图的可操作知识。本文通过对概率估计决策树(PET)进行后处理,提出了一种多类客户业务应用中利润最大化知识的自动提取算法。当PET预测客户属于任何较低盈利类别时,我们的算法建议成本敏感行动将她/他改变为最大可能的较高盈利状态。在提出的新方法中,PET以压缩形式表示为位模式矩阵,并通过应用位与运算对位模式进行后处理任务。由于采用了有效的数据结构,该方法具有较强的计算性能。在UCI数据集、真实移动电话服务数据集和其他基准数据集上进行的大量实验表明,该方法明显优于目前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Probability Estimation Decision Tree Postprocessing Method for Mining Optimal Profitable Knowledge for Enterprises with Multi-Class Customers
Enterprises often classify their customers based on the degree of profitability in decreasing order like C1, C2, ..., Cn. Generally, customers representing class Cn are zero profitable since they migrate to the competitor. They are called as attritors (or churners) and are the prime reason for the huge losses of the enterprises. Nevertheless, customers of other intermediary classes are reluctant and offer an insignificant amount of profits in different degrees and lead to uncertainty. Various data mining models like decision trees, etc., which are built using the customers’ profiles, are limited to classifying the customers as attritors or non-attritors only and not providing profitable actionable knowledge. In this paper, we present an efficient algorithm for the automatic extraction of profit-maximizing knowledge for business applications with multi-class customers by postprocessing the probability estimation decision tree (PET). When the PET predicts a customer as belonging  to any of the lesser profitable classes, then, our algorithm suggests the cost-sensitive actions to change her/him to a maximum possible higher profitable status. In the proposed novel approach, the PET is represented in the compressed form as a Bit patterns matrix and the postprocessing task is performed on the bit patterns by applying the bitwise AND operations. The computational performance of the proposed method is strong due to the employment of effective data structures. Substantial experiments conducted on UCI datasets, real Mobile phone service data and other benchmark datasets demonstrate that the proposed method remarkably outperforms the state-of-the-art methods.
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