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Your neighbors are misunderstood: On modeling accurate similarity driven by data range to collaborative web service QoS prediction

机译:您的邻居被误解了:在对由数据范围驱动的精确相似度进行建模以进行协作Web服务QoS预测时

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Quality of service (QoS) is a set of non-functional attributes of Web services for differentiating enriched Web services with same or similar functionality. Predicting the unknown QoS of Web services for service users is often required for any QoS based service computing because QoS plays a fundamental role in reliable Web service recommendation, composition and selection. Existing collaborative filtering based QoS prediction methods suffer from a serious acclimatization issue caused by the difference of QoS data range, which dramatically degrades the prediction accuracy and even impedes its adaptability. The fact that Web service QoS data exhibit large service effect with different data ranges, is verified on public real-world datasets. In this study, we aim to tackle the problem of QoS prediction while considering the influences of QoS data range in the context of collaborative filtering. In particular, a simple yet effective similarity model called JacMinMax, which is driven by QoS data range, is designed. Furthermore, two neighborhood selection strategies using JacMinMax are proposed, and the obtained neighbors are systemically integrated into neighborhood- and model-based methods for collaborative QoS predictions. Experimental results show that the proposed method efficiently alleviates the influence of the concerned QoS data ranges, and performs better than many state-of-the-art approaches with respect to accuracy. (C) 2019 Elsevier B.V. All rights reserved.
机译:服务质量(QoS)是Web服务的一组非功能属性,用于区分具有相同或相似功能的丰富Web服务。对于任何基于QoS的服务计算,通常都需要为服务用户预测Web服务的未知QoS,因为QoS在可靠的Web服务推荐,组合和选择中起着基本作用。现有的基于协作过滤的QoS预测方法由于QoS数据范围的差异而导致严重的适应问题,极大地降低了预测的准确性,甚至阻碍了其适应性。 Web服务QoS数据在不同数据范围内表现出较大的服务效果这一事实已在公共现实世界数据集上得到验证。在这项研究中,我们旨在解决QoS预测问题,同时在协作过滤的情况下考虑QoS数据范围的影响。特别是,设计了一个简单而有效的相似模型JacMinMax,该模型由QoS数据范围驱动。此外,提出了两种使用JacMinMax的邻域选择策略,并将获得的邻居系统集成到基于邻域和基于模型的方法中,以进行协作QoS预测。实验结果表明,所提出的方法有效地减轻了相关QoS数据范围的影响,并且在准确性方面比许多最新方法要好。 (C)2019 Elsevier B.V.保留所有权利。

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