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Smartphone customer segmentation based on the usage pattern

机译:基于使用模式的智能手机客户细分

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摘要

The dimension used to measure user heterogeneity plays a key role in the customer segmentation. For most traditional products, customer requirements (CRs) for products are often related to their basic characteristics and psychological characteristics. Therefore, in the traditional market segmentation theory, the dimensions used to distinguish customer differences include the demographic attributes such as gender, age, income etc., or the customer psychology. Customer behaviour, especially the purchasing behaviour, is also used as an important dimension for market segmentation. However, for the smart product like smartphone with rich functionality and multi-interactions, the customer's interaction preference can be fully released. That makes the heterogeneity of customer stems from the usage characteristics rather than the traditional demographic attributes. Hence, the usage pattern is defined and proposed as the description of the usage characteristics and be used to measure the heterogeneity of customers in this research. The Equivalence CLAss Transformation (ECLAT) algorithm is employed to identify the customer's APP frequent sets from the operating data and to construct the usage pattern. Thereafter, the customer can be segmented based on the distance among customers' usage pattern. Compared with the demographic attributes, the usage pattern can provide more reliable and truthful measures for the smartphone customer segmentation.
机译:用于衡量用户异质性的维度在客户细分中起着关键作用。对于大多数传统产品,产品的客户需求(CR)通常与它们的基本特征和心理特征有关。因此,在传统的市场细分理论中,用来区分客户差异的维度包括人口统计属性(例如性别,年龄,收入等)或客户心理。客户行为,尤其是购买行为,也被用作市场细分的重要维度。但是,对于像智能手机这样具有丰富功能和多种交互功能的智能产品,可以完全释放客户的交互偏好。这使得客户的异质性源于使用特征,而不是传统的人口统计属性。因此,在本研究中,定义并提出了使用模式作为使用特性的描述,并用于衡量客户的异质性。等效CLAss转换(ECLAT)算法用于从运营数据中识别客户的APP频繁集并构建使用模式。此后,可以基于客户使用模式之间的距离对客户进行细分。与人口属性相比,使用模式可以为智能手机客户细分提供更可靠和真实的度量。

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