Auflistung nach Schlagwort "approximation"
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- KonferenzbeitragFast Approximate Discovery of Inclusion Dependencies(Datenbanksysteme für Business, Technologie und Web (BTW 2017), 2017) Kruse, Sebastian; Papenbrock, Thorsten; Dullweber, Christian; Finke, Moritz; Hegner, Manuel; Zabel, Martin; Zöllner, Christian; Naumann, FelixInclusion dependencies (INDs) are relevant to several data management tasks, such as foreign key detection and data integration, and their discovery is a core concern of data profiling. However, n-ary IND discovery is computationally expensive, so that existing algorithms often perform poorly on complex datasets. To this end, we present F , the first approximate IND discovery algorithm. F combines probabilistic and exact data structures to approximate the INDs in relational datasets. In fact, F guarantees to find all INDs and only with a low probability false positives might occur due to the approximation. This little inaccuracy comes in favor of significantly increased performance, though. In our evaluation, we show that F scales to very large datasets and outperforms the state-of-the-art algorithm by a factor of up to six in terms of runtime without reporting any false positives. This shows that F strikes a good balance between efficiency and correctness.