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A location-aware matrix factorisation approach for collaborative web service QoS prediction

机译:用于协作Web服务QoS预测的位置感知矩阵分子方法

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摘要

Predicting the unknown QoS is often required due to the fact that most users would have invoked only a small fraction of web services. Previous prediction methods benefit from mining neighbourhood interest from explicit user QoS ratings. However, the implicitly existing but significant location information that would potentially tackle the data sparsity problem is overlooked. In this paper, we propose a unified matrix factorisation model that fully capitalises on the advantages of both location-aware neighbourhood and latent factor approach. We first develop a multiview-based neighbourhood selection method that clusters neighbours from the views of both geographical distance and rating similarity relationships. Then a personalised prediction model is built up by transforming the wisdom of neighbourhoods. Experimental results have demonstrated that our method can achieve higher prediction accuracy than other competitive approaches and as well as better alleviating the data sparsity issue.
机译:通常需要预测未知的QoS,因为大多数用户都只调用了一小部分的Web服务。以前的预测方法受益于来自明确用户QoS评级的矿业邻里兴趣。然而,忽略了可能解决数据稀疏问题的隐式现有但重要的位置信息被忽视。在本文中,我们提出了一种统一的矩阵分子模型,可以充分利用位置感知邻域和潜在因子方法的优势。我们首先开发一种基于多视图的邻域选择方法,该方法从地理距离和评级相似关系的视图中聚集邻居。然后通过改变社区的智慧来建立个性化预测模型。实验结果表明,我们的方法可以实现比其他竞争方法更高的预测精度,并更好地减轻数据稀疏问题。

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