We consider the problem of learning mixtures of product distributions over discrete domains in the distribution learning framework introduced by Kearns et al. [Proceedings of the 26th Annual Symposium on Theory of Computing (STOC), Montr´eal, QC, 1994, ACM, New York, pp. 273–282]. We give a poly(n/ε)-time algorithm for learning a mixture of k arbitrary product distributions over the n-dimensional Boolean cube {0, 1}n to accuracy ε, for any constant k. Previous polynomial-time algorithms could achieve this only for k = 2 product distributions; our result answers an open question stated independently in [M. Cryan, Learning and Approximation Algorithms for Problems Motivated by Evolutionary Trees, Ph.D. thesis, University of Warwick, Warwick, ...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
Mixture models form one of the most fundamental classes of generative models for clustered data...
We consider the problem of learning mixtures of product distributions over discrete domains in the d...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
Let C be a class of probability distributions over the discrete domain [n] = {1,..., n}. We show th...
We study the problem of learning a distribution from samples, when the underlying distribution is a ...
We discuss recent results giving algorithms for learning mixtures of unstructured distributions
We study the problem of learning from unlabeled samples very general statistical mixture models on l...
Abstract. We propose and analyze a new vantage point for the learn-ing of mixtures of Gaussians: nam...
We consider PAC learning of probability distributions (a.k.a. density estimation), where we are give...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We derive relations between theoretical properties of restricted Boltzmann machines (RBMs), popular ...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
Mixture models form one of the most fundamental classes of generative models for clustered data...
We consider the problem of learning mixtures of product distributions over discrete domains in the d...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
We give an algorithm for learning a mixture of unstructured distributions. This problem arises in va...
Let C be a class of probability distributions over the discrete domain [n] = {1,..., n}. We show th...
We study the problem of learning a distribution from samples, when the underlying distribution is a ...
We discuss recent results giving algorithms for learning mixtures of unstructured distributions
We study the problem of learning from unlabeled samples very general statistical mixture models on l...
Abstract. We propose and analyze a new vantage point for the learn-ing of mixtures of Gaussians: nam...
We consider PAC learning of probability distributions (a.k.a. density estimation), where we are give...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We derive relations between theoretical properties of restricted Boltzmann machines (RBMs), popular ...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
We propose and analyze a new vantage point for the learning of mixtures of Gaussians: namely, the PA...
Mixture models form one of the most fundamental classes of generative models for clustered data...