Personalized Web Service Recommender System ( Clustering using Location and Quality-of-Service Information )
Abstract
Web Services Are Integrated Software Components For The Support Of Interoperable Machine-To-Machine Interaction Over A Network. The Number Of Publicly Available Web Services Is Steadily Increasing On The Internet. This Increase In Availability Makes It Hard For A User To Select An Accurate Web Service Among A Large Amount Of Available Services. An Inappropriate Service Selection May Cause Many Problems. In This Paper, We Propose A Novel Collaborative Filtering-Based Web Service Recommender System To Help The Users Select Services With Optimal Quality-Of-Service (Qos) Performance. This Recommender System Employs Location Information And Qos Values To Cluster Users And Services, And Make Personalized Service Recommendation For Users Based On The Clustering Results. Compared With Existing Service Recommendation Methods, Our Approach Achieves Considerable Improvement On The Recommendation Accuracy.
Downloads
Author(s) and co-author(s) jointly and severally represent and warrant that the Article is original with the author(s) and does not infringe any copyright or violate any other right of any third parties, and that the Article has not been published elsewhere. Author(s) agree to the terms that the IJRDO Journal will have the full right to remove the published article on any misconduct found in the published article.