>Customer retention is a critical concern for mobile network operators because of the increasing competition in the mobile services sector. Such u'/> Data-driven agent-based exploration of customer behavior
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Data-driven agent-based exploration of customer behavior

机译:基于数据驱动的基于代理的客户行为探索

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摘要

>Customer retention is a critical concern for mobile network operators because of the increasing competition in the mobile services sector. Such unease has driven companies to exploit data as an avenue to better understand changing customer behavior. Data-mining techniques such as clustering and classification have been widely adopted in the mobile services sector to better understand customer retention. However, the effectiveness of these techniques is debatable due to the constant change and increasing complexity of the mobile market itself. This design study proposes an application of agent-based modeling and simulation (ABMS) as a novel approach to understanding customer behavior through the combination of market and social factors that emerge from data. External forces at play and possible company interventions can then be added to data-derived models. A dataset provided by a mobile network operator is utilized to automate decision-tree analysis and subsequent building of agent-based models. Popular churn modeling techniques were adopted in order to automate the development of models, from decision trees, and subsequently explore possible customer churn scenarios. ABMS is used to understand the behavior of customers and detect reasons why customers churned or stayed with their respective mobile network operators. A CART decision-tree method is presented that identifies agents, selects important attributes, and uncovers customer behavior – easily identifying tenure, location, and choice of mobile devices as determinants for the churn-or-stay decision. Word of mouth between customers is also explored as a possible influence factor. Importantly, methods for automating data-driven agent-based simulation model generation will support faster exploration and experimentation – including with those determinants from a wider market or social context.
机译: >由于移动服务领域的竞争日益激烈,客户保留对于移动网络运营商而言是至关重要的问题。这种不安促使企业利用数据作为更好地了解不断变化的客户行为的途径。诸如聚类和分类之类的数据挖掘技术已在移动服务领域广泛采用,以更好地了解客户保留率。但是,由于移动市场本身的不断变化和复杂性的增加,这些技术的有效性值得商bat。本设计研究提出了一种基于代理的建模和仿真(ABMS)的应用,作为一种通过结合数据中出现的市场和社会因素来理解客户行为的新颖方法。然后,可以将外部因素和可能的公司干预添加到数据衍生的模型中。由移动网络运营商提供的数据集可用于自动进行决策树分析和基于代理的模型的后续构建。为了从决策树中自动进行模型开发,并随后探索可能的客户流失场景,采用了流行的客户流失建模技术。 ABMS用于了解客户的行为并检测客户搅动或留在其各自的移动网络运营商的原因。提出了一种CART决策树方法,该方法可识别代理,选择重要属性并揭示客户行为-轻松确定使用期限,位置和移动设备的选择,作为决定是否流失的决定因素。还探讨了客户之间的口口相传作为可能的影响因素。重要的是,用于自动化基于数据的基于代理的仿真模型生成的方法将支持更快的探索和实验,包括那些来自更广阔的市场或社会环境的决定因素。

著录项

  • 来源
    《Simulation》 |2018年第3期|195-212|共18页
  • 作者

    David Bell;

  • 作者单位

    Brunel University London, Kingston Lane, London, UK;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    agent-based modeling; decision trees; customer behavior;

    机译:基于主体的建模决策树客户行为;
  • 入库时间 2022-08-18 02:50:26

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