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Personalized QoS Prediction for Web Services Using Latent Factor Models

IEEE International Conference on Services Computing(2014)

Hangzhou Dianzi Univ | Zhejiang Univ

Cited 67|Views22
Abstract
Recommending the suitable Web service is an important topic in today's society. The critical step is to accurately predict QoS of Web services. However, the highly sparse QoS data complicate the challenges. In the real world, since QoS delivery can be significantly affected by some dominant factors in the service environment (e.g., network delay and the location of user or service), Web services which are published by the same provider usually have the similar fundamental network environment. These factors can be leveraged for accurate QoS predictions, leading to high-quality service recommendations. In this paper, we expound how Latent Factor Models (LFM) can be utilized to predict the unknown QoS values. Meanwhile, we take the factors of provider and its country into consideration, which imply the latent physical location and network status information, as the latent neighbor for the set of Web services. Hence, the novel neighbor factor model is built to evaluate the personalized connection quality of latent neighbors for each service user. Then, we propose an integrated model based on LFM. Finally, we conduct a group of experiments on a large-scale real-world QoS dataset and the results demonstrate that our approach is effective, especially in the situation of data sparsity.
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Web Service,QoS prediction,Latent Factor Models,SVD,data sparsity
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要点】:本文提出了一种基于潜在因子模型(LFM)的个人化QoS预测方法,通过考虑服务提供者及其国家因素作为潜在邻居,有效解决高度稀疏QoS数据的预测挑战。

方法】:作者将服务提供者和其所在国家作为潜在邻居,构建了一种新颖的邻居因子模型,并将此模型与LFM相结合,提出了一个集成模型来预测未知QoS值。

实验】:研究者在大规模真实世界QoS数据集上进行了实验,实验结果表明该方法在数据稀疏情况下尤其有效。