AbstractWe give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assumption that no example lies too close to any separating hyperplane. Our algorithm combines random projection techniques for dimensionality reduction, polynomial threshold function constructions, and kernel methods. The algorithm is fast and simple. It learns a broader class of functions and achieves an exponential runtime improvement compared with previous work on learning intersections of halfspaces with a margin
AbstractWe show that unless NP=RP, it is hard to (even) weakly PAC-learn intersection of two halfspa...
Random projection is a simple geometric technique for reducing the dimensionality of a set of points...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
AbstractWe give a new algorithm for learning intersections of halfspaces with a margin, i.e. under t...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
AbstractWe present a polynomial-time algorithm to learn an intersection of a constant number of half...
We present a polynomial-time algorithm to learn an intersection of a constant number of halfspaces i...
We present a polynomialtime algorithm to learn an intersection of a constant number of halfspaces in...
In this paper, we take a close look at the problem of learning simple neural concepts under the uni...
We derive and analyze a new, efficient, pool-based active learning algorithm for halfspaces, called ...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
AbstractWe show that unless NP=RP, it is hard to (even) weakly PAC-learn intersection of two halfspa...
Random projection is a simple geometric technique for reducing the dimensionality of a set of points...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
AbstractWe give a new algorithm for learning intersections of halfspaces with a margin, i.e. under t...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
AbstractWe present a polynomial-time algorithm to learn an intersection of a constant number of half...
We present a polynomial-time algorithm to learn an intersection of a constant number of halfspaces i...
We present a polynomialtime algorithm to learn an intersection of a constant number of halfspaces in...
In this paper, we take a close look at the problem of learning simple neural concepts under the uni...
We derive and analyze a new, efficient, pool-based active learning algorithm for halfspaces, called ...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
AbstractWe show that unless NP=RP, it is hard to (even) weakly PAC-learn intersection of two halfspa...
Random projection is a simple geometric technique for reducing the dimensionality of a set of points...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...