In this paper we revisit some classic problems on classification under misspecification. In particular, we study the problem of learning halfspaces under Massart noise with rate $\eta$. In a recent work, Diakonikolas, Goulekakis, and Tzamos resolved a long-standing problem by giving the first efficient algorithm for learning to accuracy $\eta + \epsilon$ for any $\epsilon > 0$. However, their algorithm outputs a complicated hypothesis, which partitions space into $\text{poly}(d,1/\epsilon)$ regions. Here we give a much simpler algorithm and in the process resolve a number of outstanding open questions: (1) We give the first proper learner for Massart halfspaces that achieves $\eta + \epsilon$. We also give improved bounds on the sample co...
We examine the task of locating a target region among those induced by intersections of n halfspaces...
We give a polynomial-time algorithm for learning high-dimensional halfspaces with margins in $d$-dim...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
This work provides several new insights on the robustness of Kearns' statistical query framework aga...
We prove risk bounds for halfspace learning when the data dimensionality is allowed to be larger tha...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
<p>We introduce a new approach for designing computationally efficient and noise tolerant algorithms...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
In this paper we consider the problem of learning a linear threshold function (a halfspace in n dime...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
We examine the task of locating a target region among those induced by intersections of n halfspaces...
We give a polynomial-time algorithm for learning high-dimensional halfspaces with margins in $d$-dim...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We give the first algorithm that (under distributional assumptions) efficiently learns halfspaces in...
AbstractWe give the first polynomial time algorithm to learn any function of a constant number of ha...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
Many popular learning algorithms (E.g. Kernel SVM, logistic regression, Lasso, and Fourier-Transform...
This work provides several new insights on the robustness of Kearns' statistical query framework aga...
We prove risk bounds for halfspace learning when the data dimensionality is allowed to be larger tha...
In this thesis I study the problem of testing halfspaces under arbitrary probability distributions, ...
<p>We introduce a new approach for designing computationally efficient and noise tolerant algorithms...
We give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
In this paper we consider the problem of learning a linear threshold function (a halfspace in n dime...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
We examine the task of locating a target region among those induced by intersections of n halfspaces...
We give a polynomial-time algorithm for learning high-dimensional halfspaces with margins in $d$-dim...
Abstract. We provide sample complexity of the problem of learning halfspaces with monotonic noise, u...