• Corpus ID: 219179769

Outlier Resilient Collaborative Web Service QoS Prediction

  title={Outlier Resilient Collaborative Web Service QoS Prediction},
  author={Fanghua Ye and Zhiwei Lin and Chuan Chen and Zibin Zheng and Hong Huang and Emine Yilmaz},
Nowadays, more and more Web services are provided by different enterprises and organizations. The proliferation of Web services makes it difficult for users to select the most appropriate Web services among numerous functionally identical or similar service candidates. Quality-of-Service (QoS) is widely employed for describing the non-functional characteristics of Web services, and it has become the key differentiator for service selection. However, users cannot invoke all Web services to… 

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