Conjunctive Queries: Unique Characterizations and Exact Learnability
Cate, Balder ten, Dalmau, Victor
–arXiv.org Artificial Intelligence
We answer the question which conjunctive queries are uniquely characterized by polynomially many positive and negative examples, and how to construct such examples efficiently. As a consequence, we obtain a new efficient exact learning algorithm for a class of conjunctive queries. At the core of our contributions lie two new polynomial-time algorithms for constructing frontiers in the homomorphism lattice of finite structures. We also discuss implications for the unique characterizability and learnability of schema mappings and of description logic concepts.
arXiv.org Artificial Intelligence
Aug-15-2020
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