AbstractWe investigate the combination of two major challenges in computational learning: dealing with huge amounts of irrelevant information and learning from noisy data. It is shown that large classes of Boolean concepts that depend only on a small fraction of their variables–so-called juntas–can be learned efficiently from uniformly distributed examples that are corrupted by random attribute and classification noise. We present solutions to cope with the manifold problems that inhibit a straightforward generalization of the noise-free case. Additionally, we extend our methods to non-uniformly distributed examples and derive new results for monotone juntas and for parity juntas in this setting. It is assumed that the attribute noise is ge...
This paper studies the robustness of pac learning algorithms when the instances space is {0,1}n, and...
This paper studies the robustness of pac learning algorithms when the instance space is f0; 1g n ,...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
AbstractWe investigate the combination of two major challenges in computational learning: dealing wi...
The combination of two major challenges in machine learning is investi-gated: dealing with large amo...
AbstractWe study the problem of PAC-learning Boolean functions with random attribute noise under the...
We study the problem of PAC-learning Boolean functions with random attribute noise under the uniform...
AbstractWe study a procedure for estimating an upper bound of an unknown noise factor in the frequen...
AbstractThe present work employs a model of noise introduced earlier by the third author. In this mo...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
AbstractWe introduce a new model for learning in the presence of noise, which we call the Nasty Nois...
AbstractWe study a procedure for estimating an upper bound of an unknown noise factor in the frequen...
AbstractWe introduce a new model for learning in the presence of noise, which we call the Nasty Nois...
AbstractThis paper presents a general information-theoretic approach for obtaining lower bounds on t...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
This paper studies the robustness of pac learning algorithms when the instances space is {0,1}n, and...
This paper studies the robustness of pac learning algorithms when the instance space is f0; 1g n ,...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
AbstractWe investigate the combination of two major challenges in computational learning: dealing wi...
The combination of two major challenges in machine learning is investi-gated: dealing with large amo...
AbstractWe study the problem of PAC-learning Boolean functions with random attribute noise under the...
We study the problem of PAC-learning Boolean functions with random attribute noise under the uniform...
AbstractWe study a procedure for estimating an upper bound of an unknown noise factor in the frequen...
AbstractThe present work employs a model of noise introduced earlier by the third author. In this mo...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
AbstractWe introduce a new model for learning in the presence of noise, which we call the Nasty Nois...
AbstractWe study a procedure for estimating an upper bound of an unknown noise factor in the frequen...
AbstractWe introduce a new model for learning in the presence of noise, which we call the Nasty Nois...
AbstractThis paper presents a general information-theoretic approach for obtaining lower bounds on t...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
This paper studies the robustness of pac learning algorithms when the instances space is {0,1}n, and...
This paper studies the robustness of pac learning algorithms when the instance space is f0; 1g n ,...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...