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Graph-Based Regularization for Transductive Class-Membership Prediction
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 similarity-based 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 characterized 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