K-Partition Model for Mining Frequent Patterns in Large Databases
Mining frequent patterns has always been a great field of research for investigators. Various algorithms were developed for finding out frequent patterns in an efficient manner. But the major drawback of all these researches is the increased number of database scans. Partition algorithm is one of the approaches for mining frequent patterns but the large number of database scans required in this algorithm makes the mining process slow. Few developments have succeeded in reducing the number of database scans to two. Here an attempt has been made to develop a K-Partition algorithm which requires one database scan.