Improved Performance by Combining Web Pre-Fetching Using Clustering with Web Caching Based on SVM Learning Method

Authors

  • Kuttuva Rajendran Baskaran Associate Professor Department of Information Technolgy Kumaraguru College of Technology Coimbatore India
  • Chellan Kalaiarasan Tamilnadu College of Engineering

Keywords:

Classification, Support, Confidence, Hit Ratio, Byte Hit Ratio, Web Pre-fetching, Web caching.

Abstract

Combining Web caching and Web pre-fetching results in improving the bandwidth utilization, reducing the load on the origin server and reducing the delay incurred in accessing information. Web pre-fetching is the process of fetching the Web objects from the origin server which has more likelihood of being used in future. The fetched contents are stored in the cache. Web caching is the process of storing the popular objects ”closer” to the user so that they can be retrieved faster. In the literature many interesting works have been carried out separately for Web caching and Web pre-fetching. In this work, clustering technique is used for pre-fetching and SVM-LRU technique forWeb caching and the performance is measured in terms of Hit Ratio (HR) and Byte Hit Ratio (BHR). With the help of real data, it is demonstrated that the above approach is superior to the method of combining clustering based prefetching technique with traditional LRU page replacement method for Web caching.

Author Biographies

Kuttuva Rajendran Baskaran, Associate Professor Department of Information Technolgy Kumaraguru College of Technology Coimbatore India

Associate Professor
Department of Information Technolgy

Chellan Kalaiarasan, Tamilnadu College of Engineering

Principal

References

Ali W., Shamsuddin S.M., Ismail A.S. (2011), A survey of Web caching and prefetching, International Journal of Advances in Soft Computing and Its Applications, 3 (1): 1-27.

Ali W., Shamsuddin S.M., Ismail A.S. (2012), Intelligent Web proxy caching approaches based on machine learning techniques, Decision Support Systems, 53(3): 565-579. http://dx.doi.org/10.1016/j.dss.2012.04.011

Baskaran K.R., Kalaiarasan C., Sasi Nachimuthu A. (2013), Study of combined Web prefetching with Web caching based on machine learning technique, Journal of Theoretical and Applied Information Technology, 20th September 2013, 55(2): 280-291.

Pallis G., Vakali A., Pokorny J. (2008), A clustering-based prefetching scheme on a Web cache environment, Computers and Electrical Engineering, 34(4): 309-323. http://dx.doi.org/10.1016/j.compeleceng.2007.04.002

Podlipnig S., Boszormenyi L. (2003);

A survey of Web cache replacement strategies, ACM Computer Surveys; 35(4):374-98. http://dx.doi.org/10.1145/954339.954341

Web reference: http://www.wikipedia.com/svm

Published

2016-01-26

Most read articles by the same author(s)

Obs.: This plugin requires at least one statistics/report plugin to be enabled. If your statistics plugins provide more than one metric then please also select a main metric on the admin's site settings page and/or on the journal manager's settings pages.