Fifth IEEE International Conference on Data Mining (ICDM'05)
Approximate Inverse Frequent Itemset Mining: Privacy, Complexity, and Approximation
Houston, Texas
November 27-November 30
ISBN: 0-7695-2278-5
In order to generate synthetic basket datasets for better benchmark testing, it is important to integrate characteristics from real-life databases into the synthetic basket datasets. The characteristics that could be used for this purpose include the frequent itemsets and association rules. The problem of generating synthetic basket datasets from frequent itemsets is generally referred to as inverse frequent itemset mining. In this paper, we show that the problem of approximate inverse frequent itemset mining is NP-complete. Then we propose and analyze an approximate algorithm for approximate inverse frequent itemset mining, and discuss privacy issues related to the synthetic basket dataset. In particular, we propose an approximate algorithm to determine the privacy leakage in a synthetic basket dataset.
Index Terms:
data mining, privacy, complexity, inverse frequent itemset mining
Citation:
Yongge Wang, Xintao Wu, "Approximate Inverse Frequent Itemset Mining: Privacy, Complexity, and Approximation," icdm, pp.482-489, Fifth IEEE International Conference on Data Mining (ICDM'05), 2005