CF Based and Location Aware Filtering for Web Service Recommendations
Keywords:
Collaborative filtering, Web Service Recommendation, QoS prediction, Location AwareAbstract
Collaborative Filtering (CF) is comprehensively used for making Web organization proposal. CF-based Web organization proposition intends to predict missing QoS (Quality-of-Service) estimations of Web organizations. Web organizations are consolidated programming parts for the sponsorship of interoperable machine-to-machine correspondence over a framework. Web organizations have been for the most part used for building organization arranged applications in both industry and the insightful world starting late. An ill-advised organization decision may achieve various issues to the ensuing applications. In this paper, we propose an area mindful customized CF strategy for Web administration suggestion. The proposed technique influences both areas of clients and Web administrations while selecting comparative neighbors for the objective client or administration, furthermore aggregate separating based Web organization recommender structure to offer customers some help with selecting organizations with perfect Quality-of-Service (QoS) execution. Our recommender structure uses the territory information and QoS qualities to gathering customers and organizations, and makes redid organization proposition for customers in light of the bundling results. Differentiated and existing organization recommendation techniques, our system finishes broad change on the proposition precision. The proposed game plan involves two stages: first, we use mixed number programming (MIP) to find the perfect breaking down of overall QoS impediments into close-by prerequisites. Second, we use coursed neighborhood decision to find the best web advantages that satisfy these close-by prerequisites. The outcomes of trial appraisal demonstrate that our system significantly beats existing courses of action similarly as computation time while fulfilling near ideal results.
References
L.-J. Zhang, J. Zhang, and H. Cai, “Service Computing”. Springer and Tsinghua University Press, 2007.
M. P. Papazoglouand D. Georgakopoulos,
“ServiceOriented computing,” Communications of the
ACM, 2003, pp. 46(10):24–28.
Shubhie Agarwal, Seema Maitrey, Pankaj Singh Yadav, "A Comparative Analysis of Data Mining Techniques in Wireless Sensor Network", International Journal of Computer Sciences and Engineering, Volume-04, Issue-04, Page No (126-131), Apr -2016
Y. Zhang, Z. Zheng, M. R. Lyu, “WSExpress: a QoSaware search engine for Web services”, in Proc. 8th
IEEE International Conference on Web Services, Miami, FL, USA, July, 2010, pp.83-90.
S. S. Yau, Y. Yin, “QoS-based service ranking and selection for servicbased systems,” in Proc. of the
International conferenceon Services Computing, Washington DC, USA, July, 2011, pp. 56 - 63.
G. Kang, J. Liu, M. Tang, X.F. Liu, and K. K. Fletcher,
“Web Service Selection for Resolving Conflicting Service Requests,” in Proc. 9th International
Conference on Web Services, Washington, DC, USA, July, 2011, pp. 387-394.
L. Shao, J. Zhang, Y. Wei, J. Zhao, B. Xie, and H. Mei, “Personalized QoS prediction for Web services via collaborative filtering, ” in Proc. 5th International
Conference on Web Services, 2007, pp. 439-446.
Z. Zheng, H. Ma, M.R. Lyu, and I. King. “WSRec: A
Collabora-tiveFilteringBasedWebService
Recommendation System,” in Proc. 7th International Conference on Web Services, Los Angeles, CA, USA,
pp. 437444, 2009.
Z. Zheng, H. Ma, M. R. Lyu, and I. King “QoS-Aware Web Service Recommendation by Collaborative
Filtering”, IEEE Trans. on Services Computing, 2011, vol.4, no.2, pp.140-152.
M. Tang, Y. Jiang, J. Liu, X. F. Liu: Location-Aware Collaborative Filtering for QoS-Based Service Recommendation. in Proc. 10th International.
R. Liu, C.X. Jia, T. Zhou, D, Sun, and B.H. Wang,
“Personal recommendation via modified collaborative filtering,” Physics and Society 388(4): 2009, pp.462-468.
G. Adomavicius and A. Tuzhilin. Recommender Systems Handbook, chapter Context-aware Recommender Systems. Springer, 2010.
G. Kang, J. Liu, M. Tang, X. Liu, B. Cao, and Y. Xu, “AWSR: Active web service recommendation based on usage history,” in Proc. Int. Conf. Web Services, 2012, pp. 186–193.
L. Liu, F. Lecue, and N. Mehandjiev, “Semantic content-based recommendation of software services using context,” ACM Trans. Web, vol. 7, no. 3, pp. 17–20, 2013.
K. Huang, Y. Fan, W. Tan. Recommendation in an Evolving Service Ecosystem Based on Network Prediction. IEEE T. Automation Science and Engineering 11(3): 906-920 (2014)
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Authors contributing to this journal agree to publish their articles under the Creative Commons Attribution 4.0 International License, allowing third parties to share their work (copy, distribute, transmit) and to adapt it, under the condition that the authors are given credit and that in the event of reuse or distribution, the terms of this license are made clear.
