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A Two-Phase Method of QoS Prediction for Situated Service Recommendation

机译:定位服务推荐的QoS预测的两阶段方法

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With the rapid growth of Web services, recommending suitable services to users has become a big challenge. The existing service recommendation works by Quality of Service (QoS) prediction fail to fully consider the influence of situation information, such as time, location, and user relations thoroughly. Two issues must be resolved to consider situation information: issue one, rating scarcity, is that there are less data to learn when importing more situations; issue two is that an effective approach is needed to adapt many situational factors. Our solution is a two-phase method: first, to overcome rating scarcity, data is augmented with estimations of unknown QoS values by learning from observable factors. The augmented data is then used to learn the important latent factors associated with the situational factors for QoS prediction. Experiments on data of real service invocations in different situations show improvement of our method in terms of QoS prediction accuracy over several existing methods, especially in the severe rating scarcity condition. In addition, analysis on parameter selection of proposed method can further assist in obtaining better QoS prediction in practical use.
机译:随着Web服务的快速增长,向用户推荐合适的服务已成为一项巨大的挑战。现有的服务质量(QoS)预测建议服务未能充分考虑情况信息(例如时间,位置和用户关系)的影响。考虑到情况信息,必须解决两个问题:问题一,评级稀缺,是在导入更多情况时需要学习的数据较少;问题二是需要一种有效的方法来适应许多情况因素。我们的解决方案分为两个阶段:首先,为了克服评级稀缺性,通过从可观察的因素中学习,使用未知QoS值的估计来扩充数据。然后,使用增强后的数据来学习与与情境因素相关联的重要潜在因素,以进行QoS预测。在不同情况下的真实服务调用数据实验表明,相对于几种现有方法,尤其是在严重的额定稀缺条件下,我们的方法在QoS预测准确性方面有所改进。另外,对所提出方法的参数选择进行分析可以进一步帮助获得更好的实际使用中的QoS预测。

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