TY - JOUR T1 - Efficient Association Rules for Data Mining AU - , C.M. Velu AU - , M. Ramakrishnan AU - , V. Somu AU - , P. Loganathan AU - , P. Vivekanandan JO - International Journal of Soft Computing VL - 2 IS - 1 SP - 21 EP - 36 PY - 2007 DA - 2001/08/19 SN - 1816-9503 DO - ijscomp.2007.21.36 UR - https://makhillpublications.co/view-article.php?doi=ijscomp.2007.21.36 KW - Transaction database KW -frequent itemet KW -clusters KW -association rules KW -minimal support threshold KW -support monotonicity KW -correlation AB - Frequent Item Sets (FIS) play an essential role in many Data Mining (DM) tasks. We want to find interesting patterns from databases (DBs), such as Association Rules (ARs), correlations, classifiers, clusters and many more. The motivation for searching Ars to examine customer’s buying behavior. ARs describe how often items are dependent on each other to purchase together. For example, an AR beer 100% chips 80% states that four of five customers that bought beer also bought chips. Such rules can be useful for decisions concerning product pricing, promotions, store layout and many others. Since their introduction in 1993 by Argawal et al., the FIS and AR mining problems have received a great deal of attention. During the past decade, hundreds of papers have been published to solve these mining problems more efficiently. In this study, we explain the basic FIS and compare various AR algorithms to extract required information from DBs. We describe the main techniques used to solve these problems. ER -