textIn fields across science and engineering, we are increasingly faced with problems where the number of variables or features we need to estimate is much larger than the number of observations. Under such high-dimensional scaling, for any hope of statistically consistent estimation, it becomes vital to leverage any potential structure in the problem such as sparsity, low-rank structure or block sparsity. However, data may deviate significantly from any one such statistical model. The motivation of this thesis is: can we simultaneously leverage more than one such statistical structural model, to obtain consistency in a larger number of problems, and with fewer samples, than can be obtained by single models? Our approach involves combining ...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
The rapid development of modern information technology has significantly facilitated the generation,...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...
textIn fields across science and engineering, we are increasingly faced with problems where the numb...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
textLearning an unknown parameter from data is a problem of fundamental importance across many field...
textDue to the rapidly increasing dimensionality of modern datasets many classical approximation alg...
In achieving structural patterns in parameters, we focus on two challenging cases in which (1) hiera...
The unprecedented growth of data in volume and dimension has led to an increased number of computati...
This thesis shows how we can exploit low-dimensional structure in high-dimensional statistics and ma...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
In this thesis, we mainly investigate two collections of problems: statistical network inference and...
While data in the real world is very high-dimensional, it generally has some underlying structure; f...
Data in statistical signal processing problems is often inherently matrix-valued, and a natural firs...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
The rapid development of modern information technology has significantly facilitated the generation,...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...
textIn fields across science and engineering, we are increasingly faced with problems where the numb...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
textLearning an unknown parameter from data is a problem of fundamental importance across many field...
textDue to the rapidly increasing dimensionality of modern datasets many classical approximation alg...
In achieving structural patterns in parameters, we focus on two challenging cases in which (1) hiera...
The unprecedented growth of data in volume and dimension has led to an increased number of computati...
This thesis shows how we can exploit low-dimensional structure in high-dimensional statistics and ma...
Sparse machine learning has recently emerged as powerful tool to obtain models of high-dimensional d...
Models or signals exhibiting low dimensional behavior (e.g., sparse signals, low rank matrices) play...
In this thesis, we mainly investigate two collections of problems: statistical network inference and...
While data in the real world is very high-dimensional, it generally has some underlying structure; f...
Data in statistical signal processing problems is often inherently matrix-valued, and a natural firs...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
The rapid development of modern information technology has significantly facilitated the generation,...
Many learning and inference problems involve high-dimensional data such as images, video or genomic ...