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Personalized Location-Aware QoS Prediction for Web Services Using Probabilistic Matrix Factorization

机译:使用概率矩阵分解的Web服务的个性化位置感知QoS预测

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QoS prediction is critical to Web service selection and recommendation, with the extensive adoption of Web services. But as one of the important factors influencing QoS values, the geographical information of users has been ignored before by most works. In this paper, we first explicate how Probabilistic Matrix Factorization (PMF) model can be employed to learn the predicted QoS values. Then, by identifying user neighbors on the basis of geographical location, we take the effect of neighbors' experience of Web service invocation into consideration. Specifically, we propose two models based on PMF, i.e. L-PMF and WL-PMF, which integrate the feature vectors of neighbors into the learning process of latent user feature vectors. Finally, extensive experiments conducted in the real-world dataset demonstrate that our models outperform other well-known approaches consistently.
机译:QoS预测对Web服务选择和推荐至关重要,广泛采用Web服务。但作为影响QoS值的重要因素之一,大多数作品之前,用户的地理信息已被忽略。在本文中,我们首先阐述如何采用验证矩阵分解(PMF)模型来学习预测的QoS值。然后,通过在地理位置的基础上识别用户邻居,我们考虑到邻居的Web服务调用的经验。具体地,我们提出了基于PMF,即L-PMF和WL-PMF的两个模型,该模型将邻居的特征向量集成到潜在用户特征向量的学习过程中。最后,在现实世界数据集中进行的广泛实验表明,我们的模型始终始终优于其他众所周知的方法。

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