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Smartphone user segmentation based on app usage sequence with neural networks

机译:基于神经网络的应用使用顺序对智能手机用户进行细分

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The term user segmentation refers to classifying users into groups depending on their specific needs, characteristics, or behaviors. It is a key element of product development and marketing in many industries, such as the smartphone industry, which employs user segmentation to gather information about usage logs, to produce new products for such specific groups of users. However, previous studies on smartphone user segmentation have been primarily based on demographics and reported usage, which are inherently subjective and prone to skew by the observers and participants. Hamka et al. (2014) was the first to conduct a study, in which smart phone user segmentation was performed using log data collected through smartphone measurements. However, they focused only on network usage and the number of apps used, and not on characteristics or preferences. In this study, we proposed novel ways of segmenting smartphone users based on app usage sequences collected from smartphone logs. We proposed a variant of seq2seq architecture combining the advantages of previous deep neural networks: neural embedding architecture and seq2seq architecture. Furthermore, we compared the user segmentation results of the proposed method with an answer set of segmentation results conducted by domain experts. These experiments demonstrated that the proposed method effectively determines similarities between usage sequences and outperforms existing user segmentation methods.
机译:术语用户细分是指根据用户的特定需求,特征或行为将其分类。它是许多行业中产品开发和营销的关键要素,例如智能手机行业,该行业利用用户细分来收集有关使用日志的信息,从而为此类特定用户群体生产新产品。但是,先前有关智能手机用户细分的研究主要基于人口统计和报告的使用情况,这本质上是主观的,并且容易被观察者和参与者歪曲。 Hamka等。 (2014)是第一个进行研究的研究,其中使用通过智能手机测量收集的日志数据进行智能手机用户细分。但是,它们仅关注网络使用情况和使用的应用程序数量,而不关注特征或首选项。在这项研究中,我们提出了根据从智能手机日志收集的应用使用顺序对智能手机用户进行细分的新颖方法。我们提出了seq2seq架构的一种变体,它结合了以前的深度神经网络的优点:神经嵌入架构和seq2seq架构。此外,我们将提出的方法的用户细分结果与领域专家进行的细分结果答案集进行了比较。这些实验表明,该方法有效地确定了使用序列之间的相似性,并且优于现有的用户细分方法。

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