Intelligent and Adaptive Web Page Recommender System

In this manuscript, an Intelligent and Adaptive Web Page Recommender System is proposed that provides personalized, global and group mode of recommendations. The authors enhance the utility of a trie node for storing relevant web access statistics. The trie node enables dynamic clustering of users based on their evolving browsing patterns and allows a user to belong to multiple groups at each navigation step. The system takes cues from the field of crowd psychology to augment two parameters for modeling group behavior: Uniformity and Recommendation strength. The system continuously tracks the user’s responses in order to adaptively switch between different recommendation-criteria in the group and personalized modes. The experimental results illustrate that the system achieved the maximum F1 measure of 83.28% on CTI dataset which is a significant improvement over the 70% F1 measure reported by Automatic Clustering-based Genetic Algorithm, the prior web recommender system.

[1]  F. O. Isinkaye,et al.  Recommendation systems: Principles, methods and evaluation , 2015 .

[2]  R. K. Pateriya,et al.  Collaborative Filtering Techniques in Recommendation Systems , 2019, Data, Engineering and Applications.

[3]  B. Sathiyabhama,et al.  Frequent pagesets from web log by enhanced weighted association rule mining , 2016, Cluster Computing.

[4]  Pradeep Kumar,et al.  A web recommendation system considering sequential information , 2015, Decis. Support Syst..

[5]  Ali Mamat,et al.  WebPUM: A Web-based recommendation system to predict user future movements , 2010, Expert Syst. Appl..

[6]  Nima Jafari Navimipour,et al.  Recommender systems: A systematic review of the state of the art literature and suggestions for future research , 2018, Kybernetes.

[7]  Murat Göksedef,et al.  Combination of Web page recommender systems , 2010, Expert Syst. Appl..

[8]  Nur Izura Udzir,et al.  IPACT: Improved Web Page Recommendation System Using Profile Aggregation Based On Clustering of Transactions , 2011 .

[9]  Mehrnoush Shamsfard,et al.  An effective Web page recommender using binary data clustering , 2015, Information Retrieval Journal.

[10]  Maurizio Morisio,et al.  Hybrid recommender systems: A systematic literature review , 2019, Intell. Data Anal..

[11]  Mehrbakhsh Nilashi,et al.  Collaborative filtering recommender systems , 2013 .

[12]  Fereshteh Darbandi Monfared A novel web page recommender using data automatic clustering and Markov process , 2019 .

[13]  Mehrdad Jalali,et al.  Web Page Recommendation Based on Semantic Web Usage Mining , 2012, SocInfo.

[14]  M. S. Irfan Ahmed,et al.  Prediction of user’s type and navigation pattern using clustering and classification algorithms , 2017, Cluster Computing.

[15]  Guy Shani,et al.  Evaluating Recommendation Systems , 2011, Recommender Systems Handbook.