Deciding Entailment of Implications with Support and Confidence in Polynomial Space

Daniel Borchmann

Association Rules are a basic concept of data mining. They are, however, not understood as logical objects which can be used for reasoning. The purpose of this paper is to investigate a model based semantic for implications with certain constraints on their support and confidence in relational data, which then resemble association rules, and to present a possibility to decide entailment for them.

Knowledge Graph

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