Probabilistic Frequent Pattern Growth for Itemset Mining in Uncertain Databases (Technical Report)
CoRR(2010)
摘要
Frequent itemset mining in uncertain transaction databases semantically and
computationally differs from traditional techniques applied on standard
(certain) transaction databases. Uncertain transaction databases consist of
sets of existentially uncertain items. The uncertainty of items in transactions
makes traditional techniques inapplicable. In this paper, we tackle the problem
of finding probabilistic frequent itemsets based on possible world semantics.
In this context, an itemset X is called frequent if the probability that X
occurs in at least minSup transactions is above a given threshold. We make the
following contributions: We propose the first probabilistic FP-Growth algorithm
(ProFP-Growth) and associated probabilistic FP-Tree (ProFP-Tree), which we use
to mine all probabilistic frequent itemsets in uncertain transaction databases
without candidate generation. In addition, we propose an efficient technique to
compute the support probability distribution of an itemset in linear time using
the concept of generating functions. An extensive experimental section
evaluates the our proposed techniques and shows that our ProFP-Growth approach
is significantly faster than the current state-of-the-art algorithm.
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关键词
possible worlds,linear time,probability distribution,generating function
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