We give the first representation-independent hardness result for agnostically learning halfspaces with respect to the Gaussian distribution. We reduce from the problem of learning sparse parities with noise with respect to the uniform distribution on the hypercube (sparse LPN), a notoriously hard problem in computer science and show that any algorithm for agnostically learning halfspaces requires nΩ(log (1/)) time, ruling out a polynomial time algorithm for the problem. As far as we are aware, this is the first representation-independent hardness result for supervised learning when the underlying distribution is restricted to be a Gaussian. We also show that the problem of agnostically learning sparse polynomials with respect to the Gaussia...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We consider the long-open problem of attribute-efficient learning of halfspaces. In this problem the...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
There are many high dimensional function classes that have fast agnostic learning algorithms when as...
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 give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
The increased availability of data in recent years has led several authors to ask whether it is poss...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
We study the learnability of sets in Rn under the Gaussian distribution, taking Gaussian surface are...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We give the first representation-independent hardness results for PAC learning intersections of half...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
We study the question of learning a sparse multi-variate polynomial over the real domain. In particu...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We consider the long-open problem of attribute-efficient learning of halfspaces. In this problem the...
We give the first representation-independent hardness result for agnostically learning halfspaces wi...
There are many high dimensional function classes that have fast agnostic learning algorithms when as...
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 give the first polynomial time algorithm to learn any function of a constant number of halfspaces...
The increased availability of data in recent years has led several authors to ask whether it is poss...
We address well-studied problems concerning the learnability of parities and halfspaces in the prese...
We study the learnability of sets in Rn under the Gaussian distribution, taking Gaussian surface are...
We consider the problem of learning a halfspace in the agnostic framework of Kearns et al., where a ...
We give the first representation-independent hardness results for PAC learning intersections of half...
The thesis explores efficient learning algorithms in settings which are more restrictive than the PA...
We study the question of learning a sparse multi-variate polynomial over the real domain. In particu...
Thesis (Ph.D.)--University of Washington, 2020We present several novel results on computational prob...
It is becoming increasingly important to understand the vulnerability of machine learning models to ...
We consider the long-open problem of attribute-efficient learning of halfspaces. In this problem the...