Web Usage Mining Approaches for Web Page Recommendation: A Survey

The technology behind personalization or Web page recommendation has undergone tremendous changes, and several Web-based personalization systems have been proposed in recent years. The main goal of Web personalization is to dynamically recommend Web pages based on online behavior of users. Although personalization can be accomplished in numerous ways, most Web personalization techniques fall into four major categories: decision rule-based filtering, content-based filtering, and collaborative filtering and Web usage mining. Decision rule-based filtering reviews users to obtain user demographics or static profiles, and then lets Web sites manually specify rules based on them. It delivers the appropriate content to a particular user based on the rules. However, it is not particularly useful because it depends on users knowing in advance the content that interests them. Content-based filtering relies on items being similar to what a user has liked previously. Collaborative filtering, also called social or group filtering, is the most successful personalization technology to date. Most successful recommender systems on the Web typically use explicit user ratings of products or preferences to sort user profile information into peer groups. It then tells users what products they might want to buy by combining their personal preferences with those of like-minded individuals. However, collaborative filtering has limited use for a new product that no one has seen or rated, and content-based filtering to obtain user profiles might miss novel or surprising information. Additionally, traditional Web personalization techniques, including collaborative or content-based filtering, have other problems, such as reliance on subject user ratings and static profiles or the inability to capture richer semantic relationships among Web objects. To overcome these shortcomings, the new Web personalization tool, nonintrusive personalization, at tempts to increasingly incorporate Web usage mining techniques. Web usage mining can help improve the scalability, accuracy, and flexibility of recommender systems. Thus, Web usage mining can reduce the need for obtaining subjective user ratings or registration-based personal preferences. This chapter provides a survey of Web usage mining approaches.

[1]  Zhang Qi,et al.  Rough Set Page Recommendation Algorithm Based on Information Entropy , 2008, CSSE 2008.

[2]  Ali Selamat,et al.  Web page feature selection and classification using neural networks , 2004, Inf. Sci..

[3]  Jaideep Srivastava,et al.  Data Preparation for Mining World Wide Web Browsing Patterns , 1999, Knowledge and Information Systems.

[4]  Jaideep Srivastava,et al.  Web usage mining: discovery and applications of usage patterns from Web data , 2000, SKDD.

[5]  Georgios Paliouras,et al.  Web Usage Mining as a Tool for Personalization: A Survey , 2003, User Modeling and User-Adapted Interaction.

[6]  Yibo Ren,et al.  Research on personalized recommendation based on web usage mining using collaborative filtering technique , 2009 .

[7]  Siu Cheung Hui,et al.  An Effective Approach for Periodic Web Personalization , 2006, 2006 IEEE/WIC/ACM International Conference on Web Intelligence (WI 2006 Main Conference Proceedings)(WI'06).

[8]  K. Menon,et al.  Web personalization using neuro-fuzzy clustering algorithms , 2003, 22nd International Conference of the North American Fuzzy Information Processing Society, NAFIPS 2003.

[9]  Tao Luo,et al.  Discovery and Evaluation of Aggregate Usage Profiles for Web Personalization , 2004, Data Mining and Knowledge Discovery.

[10]  M. Tamer Özsu,et al.  A Web page prediction model based on click-stream tree representation of user behavior , 2003, KDD '03.

[11]  Jaideep Srivastava,et al.  Automatic personalization based on Web usage mining , 2000, CACM.

[12]  Zhang Yang Mining Sequential Association Rule for Improving Web Document Prediction , 2006 .

[13]  Sung Ho Ha,et al.  Fuzzy Web Ad Selector Based on Web Usage Mining , 2003, IEEE Intell. Syst..

[14]  Feng-Hsu Wang,et al.  Effective personalized recommendation based on time-framed navigation clustering and association mining , 2004, Expert Syst. Appl..

[15]  Andreas Thor,et al.  Adaptive website recommendations with AWESOME , 2005, The VLDB Journal.

[16]  Xin Jin,et al.  A Web recommendation system based on maximum entropy , 2005, International Conference on Information Technology: Coding and Computing (ITCC'05) - Volume II.

[17]  Matthias Baumgarten,et al.  User-Driven Navigation Pattern Discovery from Internet Data , 1999, WEBKDD.

[18]  Michael D. Smith,et al.  Using Path Profiles to Predict HTTP Requests , 1998, Comput. Networks.

[19]  Farnoush Banaei Kashani,et al.  Efficient and Anonymous Web-Usage Mining for Web Personalization , 2003, INFORMS J. Comput..

[20]  Hiroshi Ando,et al.  Psychodynamic Appraisal Mechanism for Emotional Development through Multi-modal Interaction , 2007, International Conference on Computational Intelligence and Multimedia Applications (ICCIMA 2007).

[21]  Fabrizio Silvestri,et al.  Dynamic personalization of web sites without user intervention , 2007, CACM.

[22]  Henry Lieberman,et al.  Letizia: An Agent That Assists Web Browsing , 1995, IJCAI.

[23]  Yao Min,et al.  An Effective Technique for Personalization Recommendation Based on Access Sequential Patterns , 2006, 2006 IEEE Asia-Pacific Conference on Services Computing (APSCC'06).

[24]  Fabrizio Silvestri,et al.  On-line generation of suggestions for Web users , 2004, International Conference on Information Technology: Coding and Computing, 2004. Proceedings. ITCC 2004..

[25]  Antonio Picariello,et al.  A web usage mining algorithm for web personalization , 2008, Intell. Decis. Technol..

[26]  Umeshwar Dayal,et al.  From User Access Patterns to Dynamic Hypertext Linking , 1996, Comput. Networks.

[27]  Aistis Raudys,et al.  A process of knowledge discovery from web log data: Systematization and critical review , 2007, Journal of Intelligent Information Systems.

[28]  Yoon Ho Cho,et al.  A personalized recommender system based on web usage mining and decision tree induction , 2002, Expert Syst. Appl..

[29]  Jaideep Srivastava,et al.  Web usage mining: discovery and application of interesting patterns from web data , 2000 .

[30]  Shaozhi Ye,et al.  Web Site Recommendation Using HTTP Traffic , 2007, Seventh IEEE International Conference on Data Mining (ICDM 2007).

[31]  Bamshad Mobasher,et al.  Intelligent Techniques for Web Personalization , 2005, Lecture Notes in Computer Science.

[32]  Sankar K. Pal,et al.  Web mining in soft computing framework: relevance, state of the art and future directions , 2002, IEEE Trans. Neural Networks.

[33]  Richard Weber,et al.  A methodology for web usage mining and its application to target group identification , 2004, Fuzzy Sets Syst..

[34]  Philip S. Yu,et al.  Horting hatches an egg: a new graph-theoretic approach to collaborative filtering , 1999, KDD '99.

[35]  Weihui Dai,et al.  Website browsing aid: A navigation graph-based recommendation system , 2008, Decis. Support Syst..

[36]  K. Thangavel,et al.  A Robust Biclustering Approach for Effective Web Personalization , 2011 .

[37]  Mamata Jenamani,et al.  Online Customized Index Synthesis in Commercial Web Sites , 2002, IEEE Intell. Syst..

[38]  K. Thangavel,et al.  Mining and Analysis of Clickstream Patterns , 2009, Foundations of Computational Intelligence.

[39]  Mathias Géry,et al.  Evaluation of web usage mining approaches for user's next request prediction , 2003, WIDM '03.

[40]  Giovanna Castellano,et al.  A Neuro-Fuzzy Strategy for Web Personalization , 2008, AAAI.

[41]  Yu-Hsiang Fu,et al.  A novel prediction model based on hierarchical characteristic of web site , 2011, Expert Syst. Appl..

[42]  Xindong Wu,et al.  SiteHelper: A Localized Agent That Helps Incremental Exploration of the World Wide Web , 1997, Comput. Networks.

[43]  Hidekazu Tsuji,et al.  Mining Web logs for a personalized recommender system , 2005, ITRE 2005. 3rd International Conference on Information Technology: Research and Education, 2005..

[44]  Olfa Nasraoui,et al.  Accurate web recommendations based on profile-specific url-predictor neural networks , 2004, WWW Alt. '04.

[45]  Wang Yong,et al.  Mining sequential association-rule for improving Web document prediction , 2005, Sixth International Conference on Computational Intelligence and Multimedia Applications (ICCIMA'05).

[46]  Thorsten Joachims,et al.  Web Watcher: A Tour Guide for the World Wide Web , 1997, IJCAI.

[47]  Jeffrey C. Mogul,et al.  Using predictive prefetching to improve World Wide Web latency , 1996, CCRV.

[48]  K. Thangavel,et al.  Rough Set Based Feature Selection for Web Usage Mining , 2007, International Conference on Computational Intelligence and Multimedia Applications (ICCIMA 2007).

[49]  Siu Cheung Hui,et al.  Enhancing Mobile Web Access Using Intelligent Recommendations , 2006, IEEE Intell. Syst..

[50]  Enrique Herrera-Viedma,et al.  Multi-instance genetic programming for web index recommendation , 2009, Expert Syst. Appl..

[51]  Yanchun Zhang,et al.  Discovering task-oriented usage pattern for web recommendation , 2006, ADC.

[52]  Bamshad Mobasher,et al.  Introduction to intelligent techniques for Web personalization , 2007, TOIT.