AbstractWe introduce an abstract model of exact learning via queries that can be instantiated to all the query learning models currently in use, while being closer to them than previous unifying attempts. We present a characterization of those Boolean function classes learnable in this abstract model, in terms of a new combinatorial notion that we introduce, the abstract identification dimension. Then we prove that the particularization of our notion to specific known protocols such as equivalence, membership, and membership and equivalence queries results in exactly the same combinatorial notions currently known to characterize learning in these models, such as strong consistency dimension, extended teaching dimension, and certificate size...
AbstractWe begin with a brief tutorial on the problem of learning a finite concept class over a fini...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...
1 Abstract We introduce an abstract model of exact learning via queries that can be instantiated to ...
We introduce an abstract model of exact learning via queries that can be instantiated to all the q...
We introduce an abstract model of exact learning via queries that can be instantiated to all the q...
AbstractWe introduce a combinatorial dimension that characterizes the number of queries needed to ex...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
AbstractWe begin with a brief tutorial on the problem of learning a finite concept class over a fini...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
We investigate the query complexity of exact learning in the membership and (proper) equivalence que...
Abstract. We consider the exact learning in the query model. We deal with all types of queries intro...
We extend the notion of general dimension, a combinatorial characterization of learning complexity ...
AbstractWe prove a new combinatorial characterization of polynomial learnability from equivalence qu...
AbstractWe begin with a brief tutorial on the problem of learning a finite concept class over a fini...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...
1 Abstract We introduce an abstract model of exact learning via queries that can be instantiated to ...
We introduce an abstract model of exact learning via queries that can be instantiated to all the q...
We introduce an abstract model of exact learning via queries that can be instantiated to all the q...
AbstractWe introduce a combinatorial dimension that characterizes the number of queries needed to ex...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
AbstractWe begin with a brief tutorial on the problem of learning a finite concept class over a fini...
We prove a new combinatorial characterization of polynomial learnability from equivalence queries, a...
We investigate the query complexity of exact learning in the membership and (proper) equivalence que...
Abstract. We consider the exact learning in the query model. We deal with all types of queries intro...
We extend the notion of general dimension, a combinatorial characterization of learning complexity ...
AbstractWe prove a new combinatorial characterization of polynomial learnability from equivalence qu...
AbstractWe begin with a brief tutorial on the problem of learning a finite concept class over a fini...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...
There are multiple connections between model-theoretic notions of complexity and machine learning. N...