基于代理的客户建模:从环境中学习的个体

D. Collings, A. Reeder, Iqbal Adjali, P. Crocker, M. Lyons
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引用次数: 8

摘要

了解电讯服务在客户群体中的采用率,对于确保提供适当的网络容量以维持服务质量至关重要。这个问题超出了基于使用评估产品需求的范围,还需要了解消费者如何了解服务并评估其价值。实地研究表明,口头推荐和对服务的了解对采用率有重大影响。互联网使用者可以通过工作中的交流或儿童在学校的学习受到影响。作者提出了一个基于代理的客户群体模型,以及基于现场数据的规则,该模型用于理解服务是如何被采用的。特别感兴趣的是客户如何通过与其他客户的通信进行交互以了解服务。我们展示了社交网络的不同结构、动态和分布如何影响服务在客户群体中的传播。我们的模型表明,现实世界的采用率是以非线性和复杂的方式相互作用的这些机制的组合。这种复杂的系统方法为分解这些交互提供了一种有用的方法。
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Agent based customer modelling: individuals who learn from their environment
Understanding the rate of adoption of a telecommunications service in a population of customers is of prime importance to ensure that appropriate network capacity is provided to maintain quality of service. This problem goes beyond assessing the demand for a product based on usage and requires an understanding of how consumers learn about a service and evaluate its worth. Field studies have shown that word of mouth recommendations and knowledge of a service have a significant impact on adoption rates. Adopters of the Internet can be influenced through communications at work or children learning at school. The authors present an agent based model of a population of customers, with rules based on field data, which is being used to understand how services are adopted. Of particular interest is how customers interact to learn about the service through their communications with other customers. We show how the different structure, dynamics and distribution of the social networks affect the diffusion of a service through a customer population. Our model shows that real world adoption rates are a combination of these mechanisms which interact in a non-linear and complex manner. This complex systems approach provides a useful way to decompose these interactions.
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