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QoS prediction algorithm used in location-aware hybrid Web service 被引量:2

QoS prediction algorithm used in location-aware hybrid Web service
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摘要 Quality-of-Service (QoS) describes the non-functional characteristics of Web services. As such, the QoS is a critical parameter in service selection, composition and fault tolerance, and must be accurately determined by some type of QoS prediction method. However, with the dramatic increase in the number of Web services, the prediction failure caused by data sparseness has become a critical challenge. A new 'hybrid user-location-aware prediction based on weighted Adamic-Adar (WAA)' (HUWAA) was proposed. The implicit neighbor search was optimized by incorporating location factors. Meanwhile, the ability of the improved algorithms to solve the data sparsity problem was validated in experiments on public real world datasets. The new algorithm outperforms the existing of item-based pearson correlation coefficient (IPCC), user-based pearson correlation coefficient (UPCC) and Web service recommender system (WSRec) algorithms. Quality-of-Service (QoS) describes the non-functional characteristics of Web services. As such, the QoS is a critical parameter in service selection, composition and fault tolerance, and must be accurately determined by some type of QoS prediction method. However, with the dramatic increase in the number of Web services, the prediction failure caused by data sparseness has become a critical challenge. A new 'hybrid user-location-aware prediction based on weighted Adamic-Adar (WAA)' (HUWAA) was proposed. The implicit neighbor search was optimized by incorporating location factors. Meanwhile, the ability of the improved algorithms to solve the data sparsity problem was validated in experiments on public real world datasets. The new algorithm outperforms the existing of item-based pearson correlation coefficient (IPCC), user-based pearson correlation coefficient (UPCC) and Web service recommender system (WSRec) algorithms.
出处 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2015年第1期42-49,共8页 中国邮电高校学报(英文版)
基金 supported by the National Key project of Scientific and Technical Supporting Programs of China (2013BAH10F01, 2013BAH07F02, 2014BAH26F02) the Research Fund for the Doctoral Program of Higher Education (20110005120007) Beijing Higher Education Young Elite Teacher Project (YETP0445) the Co-construction Program with Beijing Municipal Commission of Education Engineering Research Center of Information Networks,Ministry of Education
关键词 service QoS prediction data sparsity link prediction LOCATION-AWARE service QoS prediction, data sparsity, link prediction, location-aware
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  • 1Resnick P, Iacovou N, Suchak M, et al. GroupLens: An open architecture for collaborative filtering of netnews. Proceedings of the 1994 ACM Conference on Computer Supported Cooperative Work (CSCW'94), Oct 22-26, 1994, Chapel Hill, NC, USA. New York, NY, USA: ACM, 1994: 175-186.
  • 2Salton G, McGill M J. Introduction to modem information retrieval. New York, NY, USA: McGraw-Hill, 1983.
  • 3Deshpande M, Karypis G. Item-based top-N recommendation algorithms. ACM Transactions on Information Systems, 2004, 22(1): 143-177.
  • 4Breese J S, Heckerman D, Kadie C. Empirical analysis of predictive algorithms for collaborative filtering. Proceedings of the 14th Conference on Uncertainty in Artificial Intelligence (UAI'98), Jun 24-26, 1998, Madison, WI, USA. San Francisco, CA, USA; Morgan Kaufmann Publishers Inc, 1998:43-52.
  • 5Sarwar B, Karypis G, Konstan J, et al. Item-based collaborative filtering recommendation algorithms. Proceedings of the 10th International World Wide Web Conference (WWW'01), May 1-5, 2001, Hong Kong, China. New York, NY, USA: ACM, 200 I: 285-295.
  • 6Zheng Z B, Ma H, Lyu M R, et al. QoS-aware Web service recommendation by collaborative filtering. IEEE Transactions on Services Computing, 2011,4(2): 140-152.
  • 7Mao C Y, Chen J F. QoS prediction for Web services based on similarity-aware slope one collaborative filtering. Informatica, 2013, 37(2): 139-148.
  • 8Lemire D, Maclachlan A. Slope one predictors for online rating-based collaborative filtering. Proceedings of the Conference on SIAM Data Mining (SDM'05). Apr 21-23, 2005, Newport Beach, CA, USA. 2005: 5p.
  • 9Chen X, Liu X, Huang Z, et al. Regionknn: A scalable hybrid collaborative filtering algorithm for personalized Web service recommendation. Proceedings of the 2010 IEEE International Web Services (ICWS'10), Jul 5-10, 2010, Miami, FL, USA. Piscataway, NJ,USA: IEEE, 2010:9-16.
  • 10Chen X, Zheng Z B, Liu X D, et al. Personalized QoS-aware Web service recommendation and visualization. IEEE Transactions on Services Computing, 2013, 6(1): 35-41.

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