The probabilistic threshold query
is one of the most common queries in uncertain databases, where a result satisfying
the query must be also with probability meeting the threshold requirement. In
this paper, we investigate probabilistic threshold keyword queries (PrTKQ) over
XML data, which is not studied before. We first introduce the notion of
quasi-SLCA and use it to represent results for a PrTKQ with the consideration
of possible world semantics. Then we design a probabilistic inverted (PI)index
that can be used to quickly return the qualified answers and filter out the
unqualified ones based on our proposed lower upper bounds. After that, we
propose two efficient and comparable algorithms Baseline Algorithm and PI
index-based Algorithm. To accelerate the performance of algorithms, we also
utilize probability density function. An empirical study using real and
synthetic data sets has verified the effectiveness and the efficiency of our
approaches.
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