Advancement of recommender system based on clickstream data using gradient boosting and random forest classifiers

In this article, we have made an improvement on Kim et al. (2005) approach of recommending products and further developed a novel recommender system. The proposed system analyzes the clickstream data obtained from an ecommerce site and predicts the preference values of the customer for the products clicked but not purchased using more efficient classifiers such as random forest and gradient boosting and then Collaborative Filtering is used to recommend products. In Collaborative Filtering, a better similarity measure i.e. Proximity Significance Singularity along with efficient clustering algorithm i.e. rough set clustering algorithm is used which helps in making better recommendations. To determine the effectiveness of the proposed approach, an experimental evaluation have been done which clearly depicts the better performance of recommender system as compared to Kim et al. (2005).

[1]  Lu Chen,et al.  A method for discovering clusters of e-commerce interest patterns using click-stream data , 2015, Electron. Commer. Res. Appl..

[2]  Hyunbo Cho,et al.  An iterative semi-explicit rating method for building collaborative recommender systems , 2009, Expert Syst. Appl..

[3]  Michael J. Pazzani,et al.  Learning and Revising User Profiles: The Identification of Interesting Web Sites , 1997, Machine Learning.

[4]  Loriene Roy,et al.  Content-based book recommending using learning for text categorization , 1999, DL '00.

[5]  Cheng-Lung Huang,et al.  Handling sequential pattern decay: Developing a two-stage collaborative recommender system , 2009, Electron. Commer. Res. Appl..

[6]  Yoav Shoham,et al.  Fab: content-based, collaborative recommendation , 1997, CACM.

[7]  John Riedl,et al.  Analysis of recommendation algorithms for e-commerce , 2000, EC '00.

[8]  Bong-Jin Yum,et al.  Recommender system based on click stream data using association rule mining , 2011, Expert Syst. Appl..

[9]  Michael Bieber,et al.  A clickstream-based collaborative filtering personalization model: towards a better performance , 2004, WIDM '04.

[10]  ChenLu,et al.  A method for discovering clusters of e-commerce interest patterns using click-stream data , 2015 .

[11]  Su Myeon Kim,et al.  Development of a recommender system based on navigational and behavioral patterns of customers in e-commerce sites , 2005, Expert Syst. Appl..

[12]  Hui Tian,et al.  A new user similarity model to improve the accuracy of collaborative filtering , 2014, Knowl. Based Syst..

[13]  Nicholas J. Belkin,et al.  Information filtering and information retrieval: two sides of the same coin? , 1992, CACM.

[14]  Gediminas Adomavicius,et al.  Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.

[15]  Philip S. Yu,et al.  Finding Localized Associations in Market Basket Data , 2002, IEEE Trans. Knowl. Data Eng..

[16]  Mark Claypool,et al.  Implicit interest indicators , 2001, IUI '01.

[17]  Michael J. Pazzani,et al.  Learning Collaborative Information Filters , 1998, ICML.

[18]  D. A. Adeniyi,et al.  Automated web usage data mining and recommendation system using K-Nearest Neighbor (KNN) classification method , 2016 .

[19]  Young U. Ryu,et al.  Personalized Recommendation over a Customer Network for Ubiquitous Shopping , 2009, IEEE Transactions on Services Computing.

[20]  Ken Lang,et al.  NewsWeeder: Learning to Filter Netnews , 1995, ICML.

[21]  Yong Soo Kim,et al.  Recommender System Based on Product Taxonomy in E-Commerce Sites , 2013, J. Inf. Sci. Eng..

[22]  LiuHaifeng,et al.  A new user similarity model to improve the accuracy of collaborative filtering , 2014 .

[23]  Naohiro Ishii,et al.  Memory-Based Weighted-Majority Prediction for Recommender Systems , 1999, SIGIR 1999.

[24]  Pattie Maes,et al.  Social information filtering: algorithms for automating “word of mouth” , 1995, CHI '95.