A Graph Regularization Based Approach to Transductive Class-Membership Prediction

نویسندگان

  • Pasquale Minervini
  • Claudia d'Amato
  • Nicola Fanizzi
چکیده

Considering the increasing availability of structured machine processable knowledge in the context of the Semantic Web, only relying on purely deductive inference may be limiting. This work proposes a new method for similaritybased class-membership prediction in Description Logic knowledge bases. The underlying idea is based on the concept of propagating class-membership information among similar individuals; it is non-parametric in nature and characterised by interesting complexity properties, making it a potential candidate for large-scale transductive inference. We also evaluate its effectiveness with respect to other approaches based on inductive inference in SW literature.

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تاریخ انتشار 2012