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Logical Separability of Incomplete Data under Ontologies

2020-07-03 11:00:47
Jean Christoph Jung, Carsten Lutz, Hadrien Pulcini, Frank Wolter

Abstract

Finding a logical formula that separates positive and negative examples given in the form of labeled data items is fundamental in applications such as concept learning, reverse engineering of database queries, and generating referring expressions. In this paper, we investigate the existence of a separating formula for incomplete data in the presence of an ontology. Both for the ontology language and the separation language, we concentrate on first-order logic and three important fragments thereof: the description logic $\mathcal{ALCI}$, the guarded fragment, and the two-variable fragment. We consider several forms of separability that differ in the treatment of negative examples and in whether or not they admit the use of additional helper symbols to achieve separation. We characterize separability in a model-theoretic way, compare the separating power of the different languages, and determine the computational complexity of separability as a decision problem.

Abstract (translated)

URL

https://arxiv.org/abs/2007.01610

PDF

https://arxiv.org/pdf/2007.01610.pdf


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