AbstractWe show that the class FBV of [0,1]-valued functions with total variation at most 1 can be agnostically learned with respect to the absolute loss in polynomial time from O1ϵ2log1δ examples, matching a known lower bound to within a constant factor. We establish a bound of O(1/m) on the expected error of a polynomial-time algorithm for learning FBV in the prediction model, also matching a known lower bound to within a constant factor. Applying a known algorithm transformation to our prediction algorithm, we obtain a polynomial-time PAC learning algorithm for FBV with a sample complexity bound of O1ϵlog1δ; this also matches a known lower bound to within a constant factor
AbstractWe consider two models of on-line learning of binary-valued functions from drifting distribu...
The authors present a class of efficient algorithms for PAC learning continuous functions and regres...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
AbstractWe show that the class FBV of [0,1]-valued functions with total variation at most 1 can be a...
AbstractWe give an overview of the fastest known algorithms for learning various expressive classes ...
AbstractWe present a new general-purpose algorithm for learning classes of [0, 1]-valued functions i...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
We present a new general-purpose algorithm for learning classes of [0, 1]-valued functions in a gene...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
AbstractWe present an algorithm for improving the accuracy of algorithms for learning binary concept...
This paper is concerned with estimating the regression function fρ in supervised learning by utilizi...
We consider the problem of learning monotone Boolean functions over under the uniform distributi...
AbstractThis paper provides evidence that there is no polynomial-time optimal mistake bound learning...
We present three computationally efficient algorithms for Probably and Approximately Correct (PAC) l...
AbstractWe consider the complexity of learning classes of smooth functions formed by bounding differ...
AbstractWe consider two models of on-line learning of binary-valued functions from drifting distribu...
The authors present a class of efficient algorithms for PAC learning continuous functions and regres...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
AbstractWe show that the class FBV of [0,1]-valued functions with total variation at most 1 can be a...
AbstractWe give an overview of the fastest known algorithms for learning various expressive classes ...
AbstractWe present a new general-purpose algorithm for learning classes of [0, 1]-valued functions i...
The majority of results in computational learning theory are concerned with concept learning, i.e. w...
We present a new general-purpose algorithm for learning classes of [0, 1]-valued functions in a gene...
AbstractWe describe a new approach for understanding the difficulty of designing efficient learning ...
AbstractWe present an algorithm for improving the accuracy of algorithms for learning binary concept...
This paper is concerned with estimating the regression function fρ in supervised learning by utilizi...
We consider the problem of learning monotone Boolean functions over under the uniform distributi...
AbstractThis paper provides evidence that there is no polynomial-time optimal mistake bound learning...
We present three computationally efficient algorithms for Probably and Approximately Correct (PAC) l...
AbstractWe consider the complexity of learning classes of smooth functions formed by bounding differ...
AbstractWe consider two models of on-line learning of binary-valued functions from drifting distribu...
The authors present a class of efficient algorithms for PAC learning continuous functions and regres...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...