keyboard_arrow_up
A New Association Rule Mining Based on Frequent Item Set

Authors

Sanober Shaikh1, Madhuri Rao1 and S. S. Mantha2, 1TSEC, India and 2VJTI, India

Abstract

In this paper a new mining algorithm is defined based on frequent item set. Apriori Algorithm scans the database every time when it finds the frequent item set so it is very time consuming and at each step it generates candidate item set. So for large databases it takes lots of space to store candidate item set. The defined algorithm scans the database at the start only once and then makes the undirected item set graph. From this graph by considering minimum support it finds the frequent item set and by considering the minimum confidence it generates the association rule. If database and minimum support is changed, the new algorithm finds the new frequent items by scanning undirected item set graph. That is why it’s executing efficiency is improved distinctly compared to traditional algorithm.

Keywords

Undirected Item set Graph, Trade List

Full Text  Volume 1, Number 3