Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Identification of Visitors Interest using Doubly Sparse Relevance Vector Machine (DSRVM) Classifier


Affiliations
1 Department of Computer Science, Rathnavel Subramaniam College of Arts & Science, Sulur, India
2 School of Computer Studies (PG), Rathnavel Subramaniam College of Arts & Science, Sulur, India
     

   Subscribe/Renew Journal


In the area of research, web usage mining is certainly one of the upcoming techniques in domain of data mining. Since web contains millions of documents among them mining the data from the web is a difficult task. The problem defined is the extraction of patterns from web server log file leads to usage of mining using pattern recognition techniques. Therefore, the fundamental design of this approach is to determine a classifier that can achieve high accuracy for the most important class, visitors with and without purchase interest. By implementing Doubly Sparse Relevance Vector Machine (DSRVM) in web page classifier to improve precision and recall. Effective tracking enables the development and improvement of the user interface and software by analyzing user behavior. Based on fuzzy logic framework the proposed techniques is implemented for the identification of visitors. In this paper, the experimental results are compared with other classifiers such as SVM and RVM to prove the best outcome of DSRVM classifier.


Keywords

Doubly Sparse Relevance Vector Machine (DSRVM), Log File, Pattern Recognition Techniques, Web Usage Mining.
User
Subscription Login to verify subscription
Notifications
Font Size

  • . Jiang, Y. and Yu, S., 2008, January. Mining e-commerce data to analyze the target customer behavior. In Knowledge Discovery and Data Mining, 2008. WKDD 2008. First International Workshop on (pp. 406-409). IEEE.
  • . Rao, V.M. and Kumari, D.V.V., 2010. An Enhanced Pre-Processing Research Framework for Web Log Data Using a Learning Algorithm.NeTCoM 2010, CSCP 01, pp.01-15.
  • . Shamsi, A. and Nayak, R., 2012. Web Usage Mining by Data Preprocessing 1.
  • . Tyagi, N.K., Solanki, A.K. and Tyagi, S., 2010. An algorithmic approach to data preprocessing in web usage mining. International journal of information technology and knowledge management, 2(2), pp.279-283.
  • . Li, X.Y., 2013. Data Preprocessing in Web Usage Mining. In The 19th International Conference on Industrial Engineering and Engineering Management (pp. 257-266). Springer Berlin Heidelberg.
  • . Elena, D.C., 2011. The process of data preprocessing for Web Usage Data Mining through a complete example. Ovidius University Annals, Economic Sciences Series, 11(1), pp.610-612.
  • . Jagan, S. and Rajagopalan, S.P., 2015. A survey on web personalization of web usage mining. International Research Journal of Engineering and Technology, 2(1), pp.6-12.
  • . Srivastava, M., Garg, R. and Mishra, P.K., 2015, March. Analysis of Data Extraction and Data Cleaning in Web Usage Mining. In Proceedings of the 2015 International Conference on Advanced Research in Computer Science Engineering & Technology (ICARCSET 2015) (p. 13). ACM.
  • . Suguna, R. and Sharmila, D., 2013. User interest level based preprocessing algorithms using web usage mining. International Journal on Computer Science and Engineering, 5(9), p.815.
  • . Yang, Q., Li, T. and Wang, K., 2003. Web-log cleaning for constructing sequential classifiers. Applied Artificial Intelligence, 17(5-6), pp.431-441.
  • . Li-na Lu, Hengyi Wei, "Sequential patterns recognition in web log mining", Mini-micro system, Vol. 5, No. 3, pp. 81-83, Feb. 2008.
  • . Kaltwang, S., Todorovic, S. and Pantic, M., 2016. Doubly sparse relevance vector machine for continuous facial behavior estimation. IEEE transactions on pattern analysis and machine intelligence, 38(9), pp.1748-1761.
  • . Tipping, M.E., 2001. Sparse Bayesian learning and the relevance vector machine. Journal of machine learning research, 1(Jun), pp.211-244.
  • . Tipping, M.E. and Faul, A.C., 2003, January. Fast marginal likelihood maximisation for sparse Bayesian models. In AISTATS.
  • . Neelima, G. and Rodda, S., 2016, March. Predicting user behavior through sessions using the web log mining. In Advances in Human Machine Interaction (HMI), 2016 International Conference on (pp. 1-5). IEEE.
  • . Gao, W.H., 2010, July. Research on client behavior pattern recognition system based on web log mining. In Machine Learning and Cybernetics (ICMLC), 2010 International Conference on (Vol. 1, pp. 466-470). IEEE.
  • . Weng, S.S. and Liu, M.J., 2004, March. Personalized product recommendation in e-commerce. In e-Technology, e-Commerce and e-Service, 2004. EEE'04. 2004 IEEE International Conference on (pp. 413-420). IEEE.

Abstract Views: 246

PDF Views: 5




  • Identification of Visitors Interest using Doubly Sparse Relevance Vector Machine (DSRVM) Classifier

Abstract Views: 246  |  PDF Views: 5

Authors

R. Padmapriya
Department of Computer Science, Rathnavel Subramaniam College of Arts & Science, Sulur, India
D. Maheswari
School of Computer Studies (PG), Rathnavel Subramaniam College of Arts & Science, Sulur, India

Abstract


In the area of research, web usage mining is certainly one of the upcoming techniques in domain of data mining. Since web contains millions of documents among them mining the data from the web is a difficult task. The problem defined is the extraction of patterns from web server log file leads to usage of mining using pattern recognition techniques. Therefore, the fundamental design of this approach is to determine a classifier that can achieve high accuracy for the most important class, visitors with and without purchase interest. By implementing Doubly Sparse Relevance Vector Machine (DSRVM) in web page classifier to improve precision and recall. Effective tracking enables the development and improvement of the user interface and software by analyzing user behavior. Based on fuzzy logic framework the proposed techniques is implemented for the identification of visitors. In this paper, the experimental results are compared with other classifiers such as SVM and RVM to prove the best outcome of DSRVM classifier.


Keywords


Doubly Sparse Relevance Vector Machine (DSRVM), Log File, Pattern Recognition Techniques, Web Usage Mining.

References