AN IMPROVED APPROACH FOR MINING PRIVACY - PRESERVING FREQUENT ITEMSETS

Bharat Solanki*, Rashmi Awasthy, Rajesh Shrivastava

Abstract


Due to the increasing use of very large databases and data warehouses, mining useful information and helpful knowledge from transactions is evolving into an important research area. Frequent Itemsets (FI) Mining is one of the most researched areas of data mining. In order to mining privacy preserving frequent itemsets on large transaction database efficiently, a new approach was proposed in this paper.

Keywords- Data mining, frequent itemsets, privacy preserving

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