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Analytical method of web user behavior using Hidden Markov Model

机译:使用隐马尔可夫模型的网络用户行为分析方法

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We propose a new analytical method to classify web user behavior based on such latent states of users as intention, interest, or motivation. First, we put the clickstream data of many users into a Hidden Markov Model in which the number of hidden states is large enough to build a state transition network. Since the variable hidden states represent different latent states of users, the movement on the state transition network can represent user behavior. Second, we divide each piece of clickstream data into sessions, which we classify using network movement as feature values. These cluster labels represent the latent states of users during their stay in the Web service. In this paper, we applied our method to the data of a social network game named Girl Friend BETA, which is an online game that is mainly provided on social networking services. We observed the following hidden states that represent the variable latent states of users, such as enthusiasm for the main contents of the service, playing basic content, and daily routines that are well observed by visiting the service: e.g. receiving login bonuses. Also, we classified the sessions by the latent states of users, such as light user sessions, low motivation sessions, and sessions in which users seem addicted to the main contents.
机译:我们提出了一种新的分析方法,将基于用户的潜在状态作为意图,兴趣或动机来分类网络用户行为。首先,我们将许多用户的点击流数据放入隐藏的马尔可夫模型中,其中隐藏状态的数量足够大以构建状态转换网络。由于变量隐藏状态表示用户的不同潜在状态,因此状态转换网络上的移动可以代表用户行为。其次,我们将每条棉铃数据划分为会话,我们使用网络移动作为特征值进行分类。这些群集标签代表了在Web服务中逗留期间用户的潜在状态。在本文中,我们将我们的方法应用于名为Girl Friend Beta的社交网络游戏的数据,这是一个主要提供的社交网络服务的在线游戏。我们观察到以下隐藏的状态,代表用户的变量潜在状态,例如通过访问该服务的服务,播放基本内容以及通过访问服务良好观察的基本内容以及每日惯例的热情:例如:例如:接收登录奖金。此外,我们通过用户潜在的用户,例如用户似乎沉迷于主要内容的亮点用户会话,低动力会话和会话,分类了会话。

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