Related Research Lines

As we have already discussed in previous chapters, the work described in this book can be considered as a further development of the PrefDatalog+/− framework presented in [9] (cf. Chap. 2), where we develop algorithms to answer skyline queries, and their generalization to k-rank queries, over classical Datalog+/− ontologies.

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