A half-space over a distance space is a generalization of a half-space in a vector space. An important advantage of a distance space over a metric space is that the triangle inequality need not be satisfied, which makes our results potentially very useful in practice. Given two points in a set, a half-space is defined by them, as the set of all points closer to the first point than to the second. In this paper we consider the problem of learning half-spaces in any finite distance space, that is, any finite set equipped with a distance function. We make use of a notion of ‘width’ of a half-space at a given point: this is defined as the difference between the distances of the point to the two points that define the half-space. We obtain proba...
In this paper we revisit some classic problems on classification under misspecification. In particul...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
The increased availability of data in recent years has led several authors to ask whether it is poss...
A half-space over a distance space is a generalization of a half-space in a vector space. An importa...
In this paper we consider the problem of learning nearest-prototype classifiers in any finite distan...
In a recent paper [M. Anthony, J. Ratsaby, Maximal width learning of binary functions, Theoretical C...
In M. Anthony and J. Ratsaby. Maximal width learning of binary functions. Theoretical Computer Scien...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
AbstractGiven a set F of classifiers and a probability distribution over their domain, one can defin...
In a recent paper, the authors introduced the notion of sample width for binary classifiers defined ...
Abstract. For S ⊆ {0, 1}n, a Boolean function f: S → {−1, 1} is a halfspace over S if there exist w ...
Abstract. We give a lower bound for the error of any unitarily invari-ant algorithm learning half-sp...
Abstract. Exact learning of half-spaces over finite subsets of IR n from membership queries is consi...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
One recently proposed criterion to separate two datasets in discriminant analysis, is to use a hype...
In this paper we revisit some classic problems on classification under misspecification. In particul...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
The increased availability of data in recent years has led several authors to ask whether it is poss...
A half-space over a distance space is a generalization of a half-space in a vector space. An importa...
In this paper we consider the problem of learning nearest-prototype classifiers in any finite distan...
In a recent paper [M. Anthony, J. Ratsaby, Maximal width learning of binary functions, Theoretical C...
In M. Anthony and J. Ratsaby. Maximal width learning of binary functions. Theoretical Computer Scien...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
AbstractGiven a set F of classifiers and a probability distribution over their domain, one can defin...
In a recent paper, the authors introduced the notion of sample width for binary classifiers defined ...
Abstract. For S ⊆ {0, 1}n, a Boolean function f: S → {−1, 1} is a halfspace over S if there exist w ...
Abstract. We give a lower bound for the error of any unitarily invari-ant algorithm learning half-sp...
Abstract. Exact learning of half-spaces over finite subsets of IR n from membership queries is consi...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
One recently proposed criterion to separate two datasets in discriminant analysis, is to use a hype...
In this paper we revisit some classic problems on classification under misspecification. In particul...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
The increased availability of data in recent years has led several authors to ask whether it is poss...