The consistency dimension and distribution-dependent learning from
queries
Abstract.
We prove a new combinatorial characterization of polynomial
learnability from equivalence queries, and state some of its
consequences relating the learnability of a class with the
learnability via equivalence and membership queries of its
subclasses obtained by restricting the instance space. Then we propose
and study two models of query learning in which there is a probability
distribution on the instance space, both as an application of the
tools developed from the combinatorial characterization and as models
of independent interest.