Reduce Scanning Process for Efficient Mining Tree in Association Rule Mining
Journal: The International Journal of Technological Exploration and Learning (Vol.1, No. 3)Publication Date: 2012-12-15
Authors : Richa Sharma Premnarayan Arya;
Page : 74-77
Keywords : FP-Tree; WSFP ?Tree; Frequent Patterns; Array Technique.;
Abstract
The essential aspect of mining association rules is to mine the frequent patterns. Due to native difficulty it is impossible to mine complete frequent patterns from a dense database. FP-growth algorithm has been implemented using a Array-based structure, known as a FP-tree, for storing compressed frequency information. Numerous experimental results have demonstrated that the algorithm performs extremely well. But In FP-growth algorithm, two traversals of FP-tree are needed for constructing the new conditional FP-tree. In this paper we present a novel ABFP tree technique that greatly reduces the need to traverse FP-trees and array based FP tree, thus obtaining significantly improved performance for FP-tree based algorithms. The technique works especially well for sparse datasets. We then present a new algorithm which use the FP-tree data structure in combination with the FP- Experimental results show that the new algorithm outperform other algorithm in not only the speed of algorithms, but also their CPU consumption and their scalability.
Other Latest Articles
- Coverage Problem in Wireless Sensor Networks
- MSC Protocol for Target Coverage Issue in Wireless Sensor Networks
- In-Vehicle Monitoring and Analysis System for Driver's Enervation
- New Improved Window Technique for Iris Segmentation
- An Impeccable Resolver for Transport Crunch Creating a secure and accident free environment
Last modified: 2013-09-09 20:05:13