We establish optimal Statistical Query (SQ) lower bounds for robustly learning certain families of discrete high-dimensional distributions. In particular, we show that no efficient SQ algorithm with access to an $\epsilon$-corrupted binary product distribution can learn its mean within $\ell_2$-error $o(\epsilon \sqrt{\log(1/\epsilon)})$. Similarly, we show that no efficient SQ algorithm with access to an $\epsilon$-corrupted ferromagnetic high-temperature Ising model can learn the model to total variation distance $o(\epsilon \log(1/\epsilon))$. Our SQ lower bounds match the error guarantees of known algorithms for these problems, providing evidence that current upper bounds for these tasks are best possible. At the technical level, we dev...
Abstract. The combinatorial problem of satisfying a given set of constraints that depend on N discre...
Stochastic convex optimization, by which the objective is the expectation of a random convex functio...
We consider the problem of distribution-free learning for Boolean function classes in the PAC and ag...
AbstractWe prove two lower bounds in the statistical query (SQ) learning model. The first lower boun...
Presented on September 18, 2017 at 11:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.I...
We study the problem of learning mixtures of linear classifiers under Gaussian covariates. Given sam...
The Kushilevitz-Mansour (KM) algorithm is an algorithm that finds all the “large” Fourier coefficien...
Statistical query (SQ) learning model of Kearns is a natural restriction of the PAC learning model i...
We study the complexity of learning in Kearns ’ well-known statistical query (SQ) learning model (Ke...
A central problem in statistical learning is to design prediction algorithms that not only perform w...
11 pages, 1 figureCombinatorial optimization is a fertile testing ground for statistical physics met...
Approximating distributions from their samples is a canonical statistical-learning problem. One of i...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We develop new tools in the theory of nonlinear random matrices and apply them to study the performa...
In the last decades the tl1eory of spin glasses has been developed within the framework of statisti...
Abstract. The combinatorial problem of satisfying a given set of constraints that depend on N discre...
Stochastic convex optimization, by which the objective is the expectation of a random convex functio...
We consider the problem of distribution-free learning for Boolean function classes in the PAC and ag...
AbstractWe prove two lower bounds in the statistical query (SQ) learning model. The first lower boun...
Presented on September 18, 2017 at 11:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.I...
We study the problem of learning mixtures of linear classifiers under Gaussian covariates. Given sam...
The Kushilevitz-Mansour (KM) algorithm is an algorithm that finds all the “large” Fourier coefficien...
Statistical query (SQ) learning model of Kearns is a natural restriction of the PAC learning model i...
We study the complexity of learning in Kearns ’ well-known statistical query (SQ) learning model (Ke...
A central problem in statistical learning is to design prediction algorithms that not only perform w...
11 pages, 1 figureCombinatorial optimization is a fertile testing ground for statistical physics met...
Approximating distributions from their samples is a canonical statistical-learning problem. One of i...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We develop new tools in the theory of nonlinear random matrices and apply them to study the performa...
In the last decades the tl1eory of spin glasses has been developed within the framework of statisti...
Abstract. The combinatorial problem of satisfying a given set of constraints that depend on N discre...
Stochastic convex optimization, by which the objective is the expectation of a random convex functio...
We consider the problem of distribution-free learning for Boolean function classes in the PAC and ag...