Please click on one of the flags to reset Reading-Direction if you consider the current setting invalid

Rough Set Clustering Approach to Replica Selection in Data Grids RSCDG

Views  912
Rating  0

 رفاه محمد كاظم المطيري
07/11/2015 20:25:26
تصفح هذه الورقة الالكترونية بتقنية Media To Flash Paper
In data grids, the fast and proper replica selection decision leads to better resource utilization due to reduction in latencies to access the best replicas and speed up the execution of the data grid jobs. In this paper, we propose a new strategy that improves replica selection in data grids with the help of the reduct concept of the Rough Set Theory (RST). Using Quickreduct algorithm the unsupervised clustering is changed into supervised reducts. Then, Rule algorithm is used for obtaining optimum rules to derive usage patterns from the data grid information system. The experiments are carried out
using Rough Set Exploration System (RSES) tool.

  • وصف الــ Tags لهذا الموضوع
  • Data Grid; Replica Selection Strategies; Rough Set Theory (RST); K_means; Quickreduct; Rule Algorithm.