Robust De-anonymization of Large Sparse Datasets

The University of Texas at Austin

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Abstract

We present a new class of statistical de- anonymization attacks against high-dimensional micro-data, such as individual preferences, recommendations, transaction records and so on. Our techniques are robust to perturbation in the data and tolerate some mistakes in the adversary's background knowledge. We apply our de-anonymization methodology to the Netflix Prize dataset, which contains anonymous movie ratings of 500,000 subscribers of Netflix, the world's largest online movie rental service. We demonstrate that an adversary who knows only a little bit about an individual subscriber can easily identify this subscriber's record in the dataset. Using the Internet Movie Database as the source of background…

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2,286
total citations
FWCI
118.07
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100%
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28
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Authors

2

Topics & keywords

Keywords
  • Computer science
  • Adversary
  • Database transaction
  • Transaction data
  • The Internet
  • Information retrieval
  • Data mining
  • World Wide Web
UN Sustainable Development Goals
  • Peace, Justice and strong institutions
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