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LocPSORank-Prediction of Ranking of Web Services Using Location-Based Clustering and PSO Algorithm

机译:使用基于位置的聚类和PSO算法对Web服务的排名进行LocPSORank预测

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摘要

Online communities will provide the trustworthiness of their services and also, recommendation systems to improve the commercial value in this competitive business world. Prediction is the greatest method to get people interested whatever offered. Traditional QoS based prediction approach, predicts the QoS value of web service when the incompletion QoS records. This proposed approach introduced cluster based PSO algorithm, which provides better scalability, simplicity, and efficiency. It uses the density-based clusters based on web service users' location and ranks the web services based on PSO algorithm. Here, top-K users are selecting based on web service preferences and weights are giving for experienced neighbors. To achieve the high-quality outcome of the ranking sequence by the control of fitness function and verified by AP correlation coefficient method. The experimental results discussed how this proposed approach provided better prediction accuracy and compared with other existing approaches.
机译:在线社区将提供其服务的信任度,并提供推荐系统,以提高在这个竞争激烈的商业世界中的商业价值。预测是使人们感兴趣的最大方法。传统的基于QoS的预测方法,在记录不完整的QoS时预测Web服务的QoS值。该提议的方法引入了基于集群的PSO算法,该算法提供了更好的可伸缩性,简单性和效率。它使用基于Web服务用户位置的基于密度的群集,并基于PSO算法对Web服务进行排名。在这里,前K位用户是根据Web服务偏好进行选择的,权重是为经验丰富的邻居提供的。通过适应度函数的控制并通过AP相关系数法验证,可以实现排序序列的高质量结果。实验结果讨论了该提议的方法如何提供更好的预测准确性,并与其他现有方法进行了比较。

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