articleJul 23, 2002Closed access

Privacy preserving association rule mining in vertically partitioned data

Purdue University West Lafayette

Indexed incrossref

Abstract

Privacy considerations often constrain data mining projects. This paper addresses the problem of association rule mining where transactions are distributed across sources. Each site holds some attributes of each transaction, and the sites wish to collaborate to identify globally valid association rules. However, the sites must not reveal individual transaction data. We present a two-party algorithm for efficiently discovering frequent itemsets with minimum support levels, without either site revealing individual transaction values.

Citation impact

1,009
total citations
FWCI
51.58
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100%
References
26
Citations per year

Authors

2

Topics & keywords

Keywords
  • Association rule learning
  • Computer science
  • Data mining
  • Information privacy
  • Association (psychology)
  • Computer security
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