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A combination of temporal and general preferences for app recommendation

机译:应用推荐的时间偏好和一般偏好的组合

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User preferences in various kinds of recommendations are in general made from the contents of recommending targets or the patterns that the targets are consumed in. As a result, a great number of previous works have focused on designing a good user preference. However, one important thing that is missed in the previous studies on user preference is that user preferences are affected by time. That is, it is of importance to capture the change of user preferences over time for better recommendations. This phenomenon is salient especially in using mobile apps. Therefore, this paper presents a time-based personalized application recommendation system which captures temporal changes in user preference. The proposed recommendation system can recommend dynamically the apps from an application market by considering the user preference and time. In order to recommend apps, the app descriptions are used to recommend new apps to users, and user preference is modeled using a probabilistic topic model from the descriptions. In order to incorporate time to the topic model, the proposed temporal topic model considers the usage of mobile apps over time for a specific user. The main problem of this temporal topic model is that it is not well trained when the number of apps that the user has used is small, and it can be remedied by incorporating a normal LDA-based topic model. As a result, the final recommendation model is a combination of temporal and LDA-based topic models. The proposed method is validated through a series of experiments. For app usages of three users for 35 days on average, it is compared with LDA-based topic model and the model that uses only temporal topic model. According to the experimental results, the proposed method outperforms the two baseline models up to 18% point in nDCG. This result proves that the proposed method is effective in content-based app recommendation.
机译:各种建议中的用户偏好通常是由推荐目标的内容或目标所消耗的模式的内容。结果,大量的前面的作品专注于设计良好的用户偏好。然而,在以前的用户偏好研究中错过的重要事项是用户偏好受时间的影响。也就是说,随着时间的推移,捕获用户偏好的变化是重视的,以便更好地建议。这种现象是突出的,特别是在使用移动应用程序。因此,本文介绍了一个基于时间的个性化应用推荐系统,它捕获了用户偏好的时间变化。拟议的推荐系统可以通过考虑用户偏好和时间来动态地推荐从应用市场的应用程序。为了推荐应用程序,应用程序描述用于向用户推荐新应用,用户首选项使用来自描述的概率主题模型建模。为了将时间合并到主题模型,所提出的时间主题模型考虑了对特定用户的时间随时间使用移动应用程序。此时间主题模型的主要问题是,当用户使用的应用程序的数量很小时,它不是很好的培训,并且可以通过结合正常的基于LDA的主题模型来弥补它。结果,最终推荐模型是基于时间和LDA的主题模型的组合。所提出的方法通过一系列实验进行验证。对于35天平均35天的应用程序使用,将其与基于LDA的主题模型和仅使用时间主题模型的模型进行比较。根据实验结果,该方法优于NDCG的两个基线模型高达18%的基线模型。该结果证明,该方法在基于内容的应用推荐中是有效的。

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