An Improved Web Service Recommendation Method based on Decomposition Machine Model
DOI:
https://doi.org/10.54691/sjt.v4i9.2095Keywords:
Web Service; Quality of Services Prediction; Collaborative Filtering; Factorization Machine.Abstract
With the increasing number of Web services with similar functions on the Internet, traditional collaborative filtering service recommendation methods may encounter problems such as data sparseness, cold start, and poor scalability. To solve the above problems, this project proposes a new Web service recommendation method based on the decomposition machine model. The method decomposes the user trust relationship matrix and the product rating matrix while adding the geographic location information of the service, and transforms the correlation matrix of the calculated user feature vector and item feature vector into the same latent factor space by means of a decomposition machine. Optimize training model parameters to provide users with accurate prediction scores. The ultimate purpose of QoS prediction is to recommend high-quality services to users, improve the efficiency of users' discovery and selection of high-quality services, and ultimately promote the utilization of network Web services and promote service providers to release higher-quality services. Scientific significance, but also has better application value.
Downloads
References
Rich E.User modeling via stereotypes.Cognitive Service,Vol.3,No.4,1979.
Z.H.Liao, J.X.Liu, Y.Z.Liu et al. Review of Web Service Discovery Technology Research [J]. Journal of Information Science, 2008.27(2):186-192.
Z.Zheng, Hao Ma, Michael R.Lyu et. al. WSRec: A Collaborative Filtering Based Web Service Recommender System[C]. Proc. 7th International Conference on Web Sercices (ICWS )2009,pp. 437-444,2009.
Tsai C F, Hung C. Cluster ensembles in collaborative filtering recommendation[J]. Applied Soft Computing, 2012, 12(4): 1417-1425.
Wu J, Chen L, Feng Y, et al. Predicting quality of service for selection by neighborhood-based collaborative filtering[J]. Systems, Man, and Cybernetics: Systems, IEEE Transactions on, 2013, 43 (2): 428-439.
Chen X, Liu X D, Huang Z C, et al. Region KNN: A Scalable Hybrid Collaborative Filtering Algorithm for Personalized Web Service Recommendation[C]. Proc. 8th International Conference on Web Services(ICWS 2010),pp.9-16,2010.
Zheng Z, Ma H, Lyu M R, et al. Collaborative web service qos prediction via neighborhood integrated matrix factorization[J]. Services Computing, IEEE Transactions on, 2013, 6(3): 289-299.
Lo W, Yin J, Li Y, et al. Efficient web service QoS prediction using local neighborhood matrix factorization[J]. Engineering Applications of Artificial Intelligence, 2015, 38: 14-23.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.