Sampling based Association Rules Mining- A Recent Overview
Journal Title: International Journal on Computer Science and Engineering - Year 2010, Vol 2, Issue 2
Abstract
Abstract Association rule discovery from large databases is one of the tedious tasks in datamining.The process of frequent itemset mining, the first step in the mining of association rules, is a computational and IO intensive process necessitating repeated passes over the entire database. Sampling has been often suggested as an effective tool to reduce the size of the dataset operated at some cost to accuracy. Data mining literature presents with numerous sampling based approaches to speed up the process of Association Rule ining(ARM).Sampling is one of the important and popular data reduction technique that is used to mine huge volume of data efficiently. Sampling can speed up the mining of association rules. In this paper, we provide an overview of existing sampling based ssociation rule mining algorithms.
Authors and Affiliations
V. Umarani , Dr. M. Punithavalli,
Design and Development of Result Tool for University and College Exam and it’s Performance Study
The result system tool is designed and developed for result sheet and mark sheet preparation with various report required at University level and College level. The system is useful for the exam department of the institu...
DESIGN MODEL OF FUZZY LOGIC MEDICAL DIAGNOSIS CONTROL SYSTEM
This research work addresses the medical diagnosis regarding the normality of a human function in human brain and the diagnosis of hemorrhage and brain tumor. It enhances the control strategies in the medical field to di...
Analysis and Simulations of Routing Protocols with Different Load Conditions of MANETs
In this paper, we have compared important characteristics of MANET proactive routing protocol (DSDV), reactive protocols (AODV, DSR and TORA) and hybrid protocol (ZRP). Extensive simulations are being carried out with di...
Study on the Customer targeting using Association Rule Mining
Data mining is one of the widest area where many researches takes place to mine desired and hidden data. There are many different approaches to find the hidden data. This paper deals with Frequent Pattern growth algorith...
MRI Brain Image Segmentation Algorithm Using Watershed Transform and Kernel Fuzzy C-Means Clustering on Level Set Method
A new method for image segmentation is proposed in this paper, which combines the watershed transform, KFCM and level set method. The watershed transform is first used to presegment the image so as to get the initial par...