服务的协同生产:利用霍克斯流程对联络中心的服务时间进行建模

A. Daw, Antonio Castellanos, G. Yom-Tov, Jamol Pender, L. Gruendlinger
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引用次数: 12

摘要

在客户支持中心,成功的服务交互包括客户和座席之间的对话。双方在信息和问题解决方面相互依赖,这种交互定义了共同生成的服务流程。在本文中,我们提出、发展并比较了呼叫中心服务协同生产的新随机模型。利用来自服务通信数据的洞察力,我们使用自激励和相互激励的二元Hawkes过程对服务交互进行建模,因此来自一方的通信增加了另一方很快做出响应的可能性。此外,我们的模型既包含了依赖于代理工作量的动态繁忙因素,也包含了依赖于交互内部机制的动态因素。为了理解我们的Hawkes模型对消息时间戳的描述有多好,我们比较了这些模型在工业呼叫中心数据上的拟合度。我们的研究表明,考虑到相互作用和各方提供的信息量的词计数双变量Hawkes模型最适合数据。除了良好的拟合性外,Hawkes模型还允许我们为双方的通信率与对话进度之间的关系构建明确的表达式。这些公式表明,在短期内,座席在安排服务进度方面更有主导作用,但从长远来看,客户对对话的持续时间有更深远的影响。最后,我们使用我们的模型来预测给定会话中的未来活动水平,通过该模型,我们发现包含各方提供的信息量或客户表达的情绪的二元Hawkes过程为我们提供了最准确的预测。
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The Co-Production of Service: Modeling Service Times in Contact Centers Using Hawkes Processes
In customer support centers, a successful service interaction involves a dialogue between a customer and an agent. Both parties depend on one another for information and problem solving, and this interaction defines a co-produced service process. In this paper, we propose, develop, and compare new stochastic models for the co-production of service in a contact center. Using insights from service communication data, we model the service interactions using self-exciting and mutually exciting bivariate Hawkes processes, so that a correspondence from one party increases the likelihood of a response from the other party soon after. Moreover, our models incorporate both dynamic busyness factors that depend on the agent workload as well as dynamic factors that depend on the inner-mechanics of the interaction. To understand how well our Hawkes models describe the message-timestamps, we compare the goodness-of-fit of these models on contact center data from industry. We show that the word-count bivariate Hawkes model, which takes into account the mutual interaction and the amount of information provided by each party, fits the data the best. In addition to a great goodness-of-fit, the Hawkes models allow us to construct explicit expressions for the relationship between the correspondence rates of each party and the conversation progress. These formulae illustrate that the agent is more dominant in pacing the service along in the short term, but that the customer has a more profound effect on the duration of the conversation in the long run. Finally, we use our models to predict the future level of activity within a given conversation, through which we find that the bivariate Hawkes processes that incorporate the amount of information provided by each party or the sentiment expressed by the customer give us the most accurate predictions.
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