首页> 外文会议>Machine Learning and Applications, 2009. ICMLA '09 >Clustering and Naïve Bayesian Approaches for Situation-Aware Recommendation on Mobile Devices
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Clustering and Naïve Bayesian Approaches for Situation-Aware Recommendation on Mobile Devices

机译:聚类和朴素贝叶斯方法进行移动设备情境感知推荐

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In this paper, we target the problem of the situation-aware application (task) recommendation on mobile devices. To tackle this problem, we develop both supervised and unsupervised approaches. We use Naive Bayesian as a supervised approach, and co-clustering and vector quantization (VQ) as unsupervised approaches. We evaluate the performance of the proposed approaches with both synthetic and actual user log data that we have collected for six months. Our initial experiment shows that the co-clustering-based approach results in comparable purity performance with much less computation time than VQ. Therefore, the co-clustering approach can be practical for high dimensional data. Furthermore, we characterize the recommendation performance of the proposed approaches in terms of the receiver-operating-characteristics (ROC). One interesting observation is that the unsupervised approaches perform well with a single identical threshold over all applications, while the supervised approach does better with a different threshold for each application.
机译:在本文中,我们针对移动设备上的情境感知应用程序(任务)推荐问题。为了解决这个问题,我们开发了有监督和无监督的方法。我们将朴素贝叶斯方法用作监督方法,将共聚和矢量量化(VQ)用作无监督方法。我们使用我们收集了六个月的综合和实际用户日志数据来评估所提出方法的性能。我们的初步实验表明,基于共聚的方法可产生相当的纯度,而计算时间却比VQ少得多。因此,共簇方法对于高维数据可能是实用的。此外,我们根据接收器操作特性(ROC)来表征所提出方法的推荐性能。一个有趣的观察结果是,在所有应用程序中,在相同阈值的情况下,无监督方法的性能很好,而对于每个应用程序,在不同阈值的情况下,无监督方法的效果更好。

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