Probabilistic frequent itemset mining in uncertain databases

@inproceedings{Bernecker2009ProbabilisticFI,
  title={Probabilistic frequent itemset mining in uncertain databases},
  author={Thomas Bernecker and Hans-Peter Kriegel and Matthias Renz and Florian Verhein and Andreas Z{\"u}fle},
  booktitle={KDD},
  year={2009}
}
Probabilistic frequent itemset mining in uncertain transaction databases semantically and computationally differs from traditional techniques applied to standard "certain" transaction databases. The consideration of existential uncertainty of item(sets), indicating the probability that an item(set) occurs in a transaction, makes traditional techniques inapplicable. In this paper, we introduce new probabilistic formulations of frequent itemsets based on possible world semantics. In this… CONTINUE READING
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Efficient Processing of Top-k Queries in Uncertain Databases with x-Relations

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