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Toward Computational Modeling of the Consumer Based on a Large-scale Dataset Observed in a Real Service

机译:基于在真实服务中观察到的大规模数据集的消费者计算建模

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In service industries, productivity growth requires matching the level of demand of the consumer and the level of service of the provider. This matching requires the service provider to have knowledge of consumer-related factors, such as the satisfaction level or the concept of value of the consumer. An intelligent model of the consumer is needed in order to estimate such factors because these factors cannot be observed directly by the service provider. However, obtaining knowledge of such factors in real services using conventional consumer behavior theory is difficult because the models are not designed for practical application, but rather are intended to provide a comprehensive and elaborative understanding of consumer behaviors. In addition, most conventional models are qualitative, and so cannot provide quantitative information for decision making by the providers. The present paper describes a method for computational modeling of the consumer by understanding the behavior based on large-scale datasets observed in real services. It is difficult to model the behavior or decision making process of the customer, which involves nonlinear or non-Gaussian variables, using conventional statistical modeling techniques, which assume linear or Gaussian models. We use a Bayesian network method, which can handle nonlinear and non-Gaussian variables as conditional probabilities. The models are constructed based on large-scale datasets observed in real services and present some practical applications of the models to retail and content providing services. The proposed method is efficient for many other services that use a variety of large-scale datasets.
机译:在服务行业中,生产力增长需要匹配消费者的需求水平和提供者的服务水平。此匹配要求服务提供商具有与消费者相关的因素的知识,例如满意度或消费者价值的概念。需要一种消费者的智能模型,以估计这些因素,因为服务提供商无法直接观察这些因素。然而,利用传统的消费者行为理论获取现实服务中的这种因素的知识是困难的,因为模型不是为实际应用而设计的,而是旨在为消费者行为提供全面和精细的理解。此外,大多数传统模型都是定性的,因此不能提供提供者决策的定量信息。本文介绍了一种通过了解基于真实服务中观察到的大规模数据集的行为来计算消费者的计算方法。难以使用常规统计建模技术来模拟涉及非线性或非高斯变量的客户的行为或决策过程,该技术假设线性或高斯模型。我们使用贝叶斯网络方法,可以处理非线性和非高斯变量作为条件概率。该模型基于实际服务中观察到的大规模数据集,并在零售和内容提供服务的情况下提供模型的一些实际应用。所提出的方法对于使用各种大规模数据集的许多其他服务是有效的。

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