Location-aware and Personalized Collaborative Filtering for Web Service Recommendation
Mr.A.AVINASH, Mrs.N.SUJATHA, , ,
As the number of web services with similar functionality increases, the service users usually depend on web recommendation systems. Now a days the service users pay more importance on nonfunctional properties which are also known as Quality of Service (QoS) while finding and selecting appropriate web services. Collaborative filtering approach predicts the QoS values of the web services effectively. Existing recommendation systems rarely consider the personalized influence of the users and services in determining the similarity between users and services. The proposed system is a ranking oriented hybrid approach which integrates user-based and item-based QoS predictions. Many of the non-functional properties depend on the user and the service location. The system thus employs the location information of users and services in selecting similar neighbors for the target user and service and thereby making personalized service recommendation for service users. General Terms Service computing, Recommendation
A.AVINASH et al., International Journal of Computer Engineering In Research Trends
Volume 3, Issue 05, May-2016, pp. 356-360
We have kept IJCERT is a free peer-reviewed scientific journal to endorse conservation. We have not put up a paywall to readers, and we do not charge for publishing. But running a monthly journal costs is a lot. While we do have some associates, we still need support to keep the journal flourishing. If our readers help fund it, our future will be more secure.