Context-aware smartphone application category recommender system with modularized Bayesian networks

Woo-Hyun Rho, Sung-Bae Cho
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引用次数: 6

Abstract

The number of applications available since the late 2010's, and the number of smartphone user sharply increasing. However, not all applications are not useful or helpful. In other words, to obtain satisfactory results in the search can be difficult means. Users to find what they want to search for a many times. To solve this problem, previous studies have proposed the use of recommender systems. Most of the system uses age, gender, preference based collaborative filtering. Collaborative filtering has the problem that data sparsity, cold-start or needs lots of users' personal data. In this paper, we propose a smartphone context-aware application category recommendation. We use Bayesian-network to inference context and recommend the category when inference context and we have set the probability of using category from collected data. We tested our proposed system with F1 measure, accuracy of inference context.
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基于模块化贝叶斯网络的情境感知智能手机应用类别推荐系统
自2010年后期以来,应用程序的数量和智能手机用户的数量急剧增加。然而,并不是所有的应用程序都没有用或没有帮助。换句话说,要在搜索中获得满意的结果可能是困难的手段。用户找到他们想要搜索很多次的东西。为了解决这个问题,以前的研究已经提出使用推荐系统。大多数系统采用基于年龄、性别、偏好的协同过滤。协同过滤存在数据稀疏、冷启动或需要大量用户个人数据等问题。在本文中,我们提出了一种智能手机上下文感知应用类别推荐。我们使用贝叶斯网络对推理上下文进行推理,并在推理上下文中推荐类别,并从收集到的数据中设置了使用类别的概率。我们用F1度量、推理上下文的准确性来测试我们提出的系统。
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