TY - GEN
T1 - Integration of the pagerank algorithm into web recommendation system
AU - Göksedef, Murat
AU - Öǧüdücü, Şule Gündüz
PY - 2008
Y1 - 2008
N2 - Predicting the next request of a user has gained importance due to the rapid growth of the World Wide Web. Web recommender systems help people make decisions in this complex information space where the volume of information available to them is huge. Recently, a number of approaches have been developed to extract the user behavior from his or her navigational path and predict the next request as s/he visits Web pages. Some of these approaches are based on nonsequential models such as association rules and clustering, and some are based on sequential patterns. In this paper, we propose a new model that integrates the idea of PageRank algorithm into a Web page recommendation model. A PageRank score is calculated for each page on the Web site using the observed sessions. We use a framework based on clustering of user sessions. The user sessions are clustered according to their pairwise similarities. Each cluster is represented by a tree which is called as a click-stream tree. The new user session is then assigned to a cluster based on a similarity measure. The click-stream tree of that cluster and the PageRank score of the last visiting page are then used to generate the recommendation set. The experimental evaluation shows that our method can achieve a better prediction accuracy compared to standard recommendation systems while still guaranteeing competitive time requirements.
AB - Predicting the next request of a user has gained importance due to the rapid growth of the World Wide Web. Web recommender systems help people make decisions in this complex information space where the volume of information available to them is huge. Recently, a number of approaches have been developed to extract the user behavior from his or her navigational path and predict the next request as s/he visits Web pages. Some of these approaches are based on nonsequential models such as association rules and clustering, and some are based on sequential patterns. In this paper, we propose a new model that integrates the idea of PageRank algorithm into a Web page recommendation model. A PageRank score is calculated for each page on the Web site using the observed sessions. We use a framework based on clustering of user sessions. The user sessions are clustered according to their pairwise similarities. Each cluster is represented by a tree which is called as a click-stream tree. The new user session is then assigned to a cluster based on a similarity measure. The click-stream tree of that cluster and the PageRank score of the last visiting page are then used to generate the recommendation set. The experimental evaluation shows that our method can achieve a better prediction accuracy compared to standard recommendation systems while still guaranteeing competitive time requirements.
UR - http://www.scopus.com/inward/record.url?scp=58449129476&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:58449129476
SN - 9789728924638
T3 - MCCSIS'08 - IADIS Multi Conference on Computer Science and Information Systems; Proceedings of Informatics 2008 and Data Mining 2008
SP - 19
EP - 26
BT - MCCSIS'08 - IADIS Multi Conference on Computer Science and Information Systems; Proceedings of Informatics 2008 and Data Mining 2008
T2 - Informatics 2008 and Data Mining 2008, MCCSIS'08 - IADIS Multi Conference on Computer Science and Information Systems
Y2 - 22 July 2008 through 27 July 2008
ER -