AbstractWe give an overview of the fastest known algorithms for learning various expressive classes of Boolean functions in the Probably Approximately Correct (PAC) learning model. In addition to surveying previously known results, we use existing techniques to give the first known subexponential-time algorithms for PAC learning two natural and expressive classes of Boolean functions: sparse polynomial threshold functions over the Boolean cube {0,1}n and sparse GF2 polynomials over {0,1}n
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
In the 2nd Annual FOCS (1961), C. K. Chow proved that every Boolean threshold function is uniquely d...
AbstractWe give an overview of the fastest known algorithms for learning various expressive classes ...
AbstractWe consider a fundamental problem in computational learning theory: learning an arbitrary Bo...
We consider a fundamental problem in computational learning theory: learning an arbitrary Boolean f...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractWe present an algorithm for improving the accuracy of algorithms for learning binary concept...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
AbstractWe show that the class FBV of [0,1]-valued functions with total variation at most 1 can be a...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
We study the complexity of approximate representation and learning of submodular functions over the ...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
In the 2nd Annual FOCS (1961), C. K. Chow proved that every Boolean threshold function is uniquely d...
AbstractWe give an overview of the fastest known algorithms for learning various expressive classes ...
AbstractWe consider a fundamental problem in computational learning theory: learning an arbitrary Bo...
We consider a fundamental problem in computational learning theory: learning an arbitrary Boolean f...
A PAC teaching model -under helpful distributions -is proposed which introduces the classical ideas...
AbstractWe present an algorithm for improving the accuracy of algorithms for learning binary concept...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
AbstractWe show that the class FBV of [0,1]-valued functions with total variation at most 1 can be a...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
We study the complexity of approximate representation and learning of submodular functions over the ...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
This report surveys some key results on the learning of Boolean functions in a probabilistic model t...
In the 2nd Annual FOCS (1961), C. K. Chow proved that every Boolean threshold function is uniquely d...