AbstractWe give the first polynomial time algorithm to learn any function of a constant number of halfspaces under the uniform distribution on the Boolean hypercube to within any constant error parameter. We also give the first quasipolynomial time algorithm for learning any Boolean function of a polylog number of polynomial-weight halfspaces under any distribution on the Boolean hypercube. As special cases of these results we obtain algorithms for learning intersections and thresholds of halfspaces. Our uniform distribution learning algorithms involve a novel non-geometric approach to learning halfspaces; we use Fourier techniques together with a careful analysis of the noise sensitivity of functions of halfspaces. Our algorithms for learn...
In this paper we revisit some classic problems on classification under misspecification. In particul...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
AbstractWe present a polynomial-time algorithm to learn an intersection of a constant number of half...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We present a polynomial-time algorithm to learn an intersection of a constant number of halfspaces i...
AbstractWe give a new algorithm for learning intersections of halfspaces with a margin, i.e. under t...
We present a polynomialtime algorithm to learn an intersection of a constant number of halfspaces in...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
AbstractWe show that unless NP=RP, it is hard to (even) weakly PAC-learn intersection of two halfspa...
AbstractWe give the first representation-independent hardness results for PAC learning intersections...
In this paper we revisit some classic problems on classification under misspecification. In particul...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
AbstractWe present a polynomial-time algorithm to learn an intersection of a constant number of half...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We present a polynomial-time algorithm to learn an intersection of a constant number of halfspaces i...
AbstractWe give a new algorithm for learning intersections of halfspaces with a margin, i.e. under t...
We present a polynomialtime algorithm to learn an intersection of a constant number of halfspaces in...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
AbstractWe show that unless NP=RP, it is hard to (even) weakly PAC-learn intersection of two halfspa...
AbstractWe give the first representation-independent hardness results for PAC learning intersections...
In this paper we revisit some classic problems on classification under misspecification. In particul...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...