In the last decade, machine learning algorithms have been substantially developed and they have gained tremendous empirical success. But, there is limited theoretical understanding about this success. Most real learning problems can be formulated as non-convex optimization problems which are difficult to analyze due to the existence of several local optimal solutions. In this dissertation, we provide simple and efficient algorithms for learning some probabilistic models with provable guarantees on the performance of the algorithm. We particularly focus on analyzing tensor methods which entail non-convex optimization. Furthermore, our main focus is on challenging overcomplete models. Although many existing approaches for learning probabilist...
The rising computational and memory demands of machine learning models, particularly in resource-con...
The rising computational and memory demands of machine learning models, particularly in resource-con...
We consider the problem of learning mixtures of generalized linear models (GLM) which arise in class...
We provide guarantees for learning latent variable models emphasizing on the overcomplete regime, wh...
Many machine learning applications use latent variable models to explain structure in data, whereby ...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis focuses on some fundamental problems in machine learning that are posed as nonconvex mat...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Modern machine learning algorithms can extract useful information from text, images and videos. All ...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
In an unsupervised learning problem, one is given an unlabelled dataset and hopes to find some hidde...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
The rising computational and memory demands of machine learning models, particularly in resource-con...
The rising computational and memory demands of machine learning models, particularly in resource-con...
We consider the problem of learning mixtures of generalized linear models (GLM) which arise in class...
We provide guarantees for learning latent variable models emphasizing on the overcomplete regime, wh...
Many machine learning applications use latent variable models to explain structure in data, whereby ...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
The aim of this thesis is to systematically study the statistical guarantee for two representative n...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis focuses on some fundamental problems in machine learning that are posed as nonconvex mat...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Modern machine learning algorithms can extract useful information from text, images and videos. All ...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
In an unsupervised learning problem, one is given an unlabelled dataset and hopes to find some hidde...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
The rising computational and memory demands of machine learning models, particularly in resource-con...
The rising computational and memory demands of machine learning models, particularly in resource-con...
We consider the problem of learning mixtures of generalized linear models (GLM) which arise in class...