User Profiling and Behavior Evaluation Based on Improved Logistics Algorithm

Xiaoping Xiong, Wenliang Wu, Ning Li, Deran Tu, Shuang Xu, Jie Zhang, Zhi Wei
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Abstract

With the development of big data technologies and algorithms, the in-depth analysis of user data collected by user call center becomes possible. Traditional customer call center has notable shortcomings in the intelligent assessment and analysis of internal and external factors affecting customer behavior. If the impact degree and duration of user complaints cannot be accurately predicted, it will seriously hinder employee performance evaluation and enterprise development. In this paper, we proposed a novel framework to do the user profiling and predicted the user's complain probability. The experiments conducted on the 95598 call center users in Guangxi in the first quarter of 2018 show that the developed model has better distinguishing ability and accuracy than the traditional Logistics model in evaluating user behaviors. It can effectively predict the behavior of power users in advance, which is beneficial for power companies to avoid the risk of complaints, thus continuously and effectively improve user experiences, and has substantial economic and social benefits.
基于改进物流算法的用户分析与行为评价
随着大数据技术和算法的发展,对用户呼叫中心采集的用户数据进行深度分析成为可能。传统的客户呼叫中心在对影响客户行为的内外部因素进行智能评估和分析方面存在明显的不足。如果不能准确预测用户投诉的影响程度和持续时间,将严重阻碍员工绩效考核和企业发展。在本文中,我们提出了一个新的框架来进行用户分析,并预测用户的投诉概率。2018年第一季度对广西95598呼叫中心用户进行的实验表明,所开发的模型在评估用户行为方面比传统的物流模型具有更好的区分能力和准确性。它可以有效地提前预测电力用户的行为,有利于电力公司规避投诉风险,从而持续有效地改善用户体验,具有可观的经济效益和社会效益。
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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