Title :
Association rule mining using FPTree as directed acyclic graph
Author :
Rao, A. Vedula Venkateswara ; Rambabu, B. Eedala
Author_Institution :
Dept. of CSE, Sri Vasavi Eng. Coll., Pedatadepalli, India
Abstract :
Association rule mining is one of the most important aspects of data mining. It aims at searching for interesting relationships among items in a large data set or database and discovers association rules among the large no of item sets. The importance of ARM is increasing with the demand of finding frequent patterns from large data sources. Researchers developed a lot of algorithms and techniques for generating association rules. The main problem is the generation of candidate item sets before producing frequent item sets. This result in wastage of time and space. Among the existing technique the frequent pattern (FP Growth) method is the most efficient and scalable approach. It mines the frequent item set without candidate data set generation. The obstacle is it generates a massive number of conditional fp trees. In this system we propose an improvement for frequent pattern tree based technique which does not use conditional fp trees. It generates fp trees using directed acyclic graph data structure. For this we propose an algorithm that scans the database and generates fp trees as DAG so that we can generate Frequent Patterns directly using DAG without generating conditional fp trees. Using frequent patterns the association rules are generated. We compare this with traditional fp growth, MFI in terms of number of database scans, conditional FPTrees, time complexity and space complexity.
Keywords :
computational complexity; data mining; directed graphs; trees (mathematics); ARM; DAG; FP growth method; FPTree; MFI; association rule discovery; association rule mining; candidate item set generation; conditional FPTrees; data sources; database scans; directed acyclic graph data structure; frequent item set mining; frequent pattern finding; frequent pattern method; frequent pattern tree based technique; space complexity; time complexity; Boolean functions; Classification algorithms; Data structures; Indexes; Merging; Zinc; Association Rule; DZBDD; Data Mining; Directed Acyclic Graph; FP Growth; FPTree; Frequent Item Sets; Frequent Patterns; Knowledge Discovery;
Conference_Titel :
Advances in Engineering, Science and Management (ICAESM), 2012 International Conference on
Conference_Location :
Nagapattinam, Tamil Nadu
Print_ISBN :
978-1-4673-0213-5