1999
DOI: 10.1007/978-3-540-48247-5_80
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Logics and Statistics for Association Rules and Beyond

Abstract: The aim of the tutorial is four-fold: (1) To present a very natural class of logical systems suitable for formalizing, generating and evaluating statements on dependences found in given data. The popular association rules form a particular, but by far not the only example. Technically, our logical systems are monadic observational predicate calculi, i.e. calculi with generalized quantifiers, only finite models and effective semantics. Be not shocked by these terms; no non-trivial knowledge of predicate logic w… Show more

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“…Based on data mining, an association rule finds the subset of indicators or attributes frequently occurring upon the occurrence of the event and the correlation between them through statistical rules [16,17]. In general, association rules between two events are calculated with support and confidence.…”
Section: Association Rules An Association Rule Is Used To Reveal the Correlation Between Different Indicators Of An Eventmentioning
confidence: 99%
“…Based on data mining, an association rule finds the subset of indicators or attributes frequently occurring upon the occurrence of the event and the correlation between them through statistical rules [16,17]. In general, association rules between two events are calculated with support and confidence.…”
Section: Association Rules An Association Rule Is Used To Reveal the Correlation Between Different Indicators Of An Eventmentioning
confidence: 99%