Partial Queries for Constraint Acquisition

Bessiere, Christian, Carbonnel, Clement, Dries, Anton, Hebrard, Emmanuel, Katsirelos, George, Lazaar, Nadjib, Narodytska, Nina, Quimper, Claude-Guy, Stergiou, Kostas, Tsouros, Dimosthenis C., Walsh, Toby

arXiv.org Artificial Intelligence 

Learning constraint networks is known to require a number of membership queries exponential in the number of variables. In this paper, we learn constraint networks by asking the user partial queries. That is, we ask the user to classify assignments to subsets of the variables as positive or negative. We provide an algorithm, called QUACQ, that, given a negative example, focuses onto a constraint of the target network in a number of queries logarithmic in the size of the example. The whole constraint network can then be learned with a polynomial number of partial queries. We give information theoretic lower bounds for learning some simple classes of constraint networks and show that our generic algorithm is optimal in some cases.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found