Authors
Yiwen Zhang, Kaibin Wang, Qiang He, Feifei Chen, Shuiguang Deng, Zibin Zheng, Yun Yang
Publication date
2019/1/9
Journal
IEEE Transactions on Services Computing
Volume
14
Issue
5
Pages
1333-1344
Publisher
IEEE
Description
The number of Web services on the Internet has been growing rapidly. This has made it increasingly difficult for users to find the right services from a large number of functionally equivalent candidate services. Inspecting every Web service for their quality value is impractical because it is very resource consuming. Therefore, the problem of quality prediction for Web services has attracted a lot of attention in the past several years, with a focus on the application of the Matrix Factorization (MF) technique. Recently, researchers have started to employ user similarity to improve MF-based prediction methods for Web services. However, none of the existing methods has properly and systematically addressed two of the major issues: 1) retrieving appropriate neighborhood information, i.e., similar users and services; 2) utilizing full neighborhood information, i.e., both users’ and services’ neighborhood information. In this …
Total citations
2019202020212022202320249471537306
Scholar articles
Y Zhang, K Wang, Q He, F Chen, S Deng, Z Zheng… - IEEE Transactions on Services Computing, 2019