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Collaborative Web Service Quality Prediction via Exploiting Matrix Factorization and Network Map

机译:利用矩阵分解和网络映射的协同Web服务质量预测

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摘要

Quality of services (QoS) is an important concern in web service recommendation or selection. Predicting QoS values of web services based on their historical QoS records is an effective way to acquire web service QoS, and thus has attracted considerable research interests. Recently, matrix factorization (MF), a well-known model-based collaborative filtering (CF) technique, has been successfully applied to the web service QoS prediction. It is generally believed that MF can significantly outperform traditional memory-based CF techniques. However, previous work seldom considered the influence of the underlying network on web service QoS when adopting MF for web service QoS prediction. Hence, the prediction performance is not good enough. In this paper, we propose a network-aware web service QoS prediction approach by integrating MF with the network map. By employing the network map, network distances between service users can be measured and neighborhoods of users are identified. Then, the traditional MF model is revamped by incorporating the constraint term that neighbor users are likely to perceive similar QoS of web services. Experiments conducted on two real-world web service datasets indicate that our approach outperforms previous MF and CF-based approaches in prediction accuracy.
机译:服务质量(QoS)是Web服务推荐或选择中的重要问题。基于Web服务的历史记录来预测Web服务的QoS值是一种获取Web服务QoS的有效方法,因此引起了广泛的研究兴趣。最近,矩阵分解(MF)是一种众所周知的基于模型的协同过滤(CF)技术,已成功应用于Web服务QoS预测。通常认为,MF可以大大优于传统的基于内存的CF技术。但是,在采用MF进行Web服务QoS预测时,先前的工作很少考虑基础网络对Web服务QoS的影响。因此,预测性能不够好。在本文中,我们提出了一种通过将MF与网络图相集成的网络感知的Web服务QoS预测方法。通过使用网络图,可以测量服务用户之间的网络距离,并确定用户的邻居。然后,通过合并邻居用户可能会感知到类似Web服务QoS的约束条件来对传统MF模型进行修改。在两个实际的Web服务数据集上进行的实验表明,我们的方法在预测准确性方面优于以前的基于MF和CF的方法。

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