Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models

Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models
Author :
Publisher :
Total Pages : 178
Release :
ISBN-10 : OCLC:962192424
ISBN-13 :
Rating : 4/5 ( Downloads)

Book Synopsis Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models by : Amin Jalali

Download or read book Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models written by Amin Jalali and published by . This book was released on 2016 with total page 178 pages. Available in PDF, EPUB and Kindle. Book excerpt: Design and analysis of tractable methods for estimation of structured models from massive high-dimensional datasets has been a topic of research in statistics, machine learning and engineering for many years. Regularization, the act of simultaneously optimizing a data fidelity term and a structure-promoting term, is a widely used approach in different machine learning and signal processing tasks. Appropriate regularizers, with efficient optimization techniques, can help in exploiting the prior structural information on the underlying model. This dissertation is focused on exploring new structures, devising efficient convex relaxations for exploiting them, and studying the statistical performance of such estimators. We address three problems under this framework on which we elaborate below. In many applications, we aim to reconstruct models that are known to have more than one structure at the same time. Having a rich literature on exploiting common structures like sparsity and low rank at hand, one could pose similar questions about simultaneously structured models with several low-dimensional structures. Using the respective known convex penalties for the involved structures, we show that multi-objective optimization with these penalties can do no better, order-wise, than exploiting only one of the present structures. This suggests that to fully exploit the multiple structures, we need an entirely new convex relaxation, not one that combines the convex relaxations for each structure. This work, while applicable for general structures, yields interesting results for the case of sparse and low-rank matrices which arise in applications such as sparse phase retrieval and quadratic compressed sensing. We then turn our attention to the design and efficient optimization of convex penalties for structured learning. We introduce a general class of semidefinite representable penalties, called variational Gram functions (VGF), and provide a list of optimization tools for solving regularized estimation problems involving VGFs. Exploiting the variational structure in VGFs, as well as the variational structure in many common loss functions, enables us to devise efficient optimization techniques as well as to provide guarantees on the solutions of many regularized loss minimization problems. Finally, we explore the statistical and computational trade-offs in the community detection problem. We study recovery regimes and algorithms for community detection in sparse graphs generated under a heterogeneous stochastic block model in its most general form. In this quest, we were able to expand the applicability of semidefinite programs (in exact community detection) to some new and important network configurations, which provides us with a better understanding of the ability of semidefinite programs in reaching statistical identifiability limits.


Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models Related Books

Convex Optimization Algorithms and Statistical Bounds for Learning Structured Models
Language: en
Pages: 178
Authors: Amin Jalali
Categories:
Type: BOOK - Published: 2016 - Publisher:

DOWNLOAD EBOOK

Design and analysis of tractable methods for estimation of structured models from massive high-dimensional datasets has been a topic of research in statistics,
Introduction to Online Convex Optimization, second edition
Language: en
Pages: 249
Authors: Elad Hazan
Categories: Computers
Type: BOOK - Published: 2022-09-06 - Publisher: MIT Press

DOWNLOAD EBOOK

New edition of a graduate-level textbook on that focuses on online convex optimization, a machine learning framework that views optimization as a process. In ma
Convex Optimization
Language: en
Pages: 142
Authors: Sébastien Bubeck
Categories: Convex domains
Type: BOOK - Published: 2015-11-12 - Publisher: Foundations and Trends (R) in Machine Learning

DOWNLOAD EBOOK

This monograph presents the main complexity theorems in convex optimization and their corresponding algorithms. It begins with the fundamental theory of black-b
Algorithms for Convex Optimization
Language: en
Pages: 314
Authors: Nisheeth K. Vishnoi
Categories: Computers
Type: BOOK - Published: 2021-10-07 - Publisher: Cambridge University Press

DOWNLOAD EBOOK

In the last few years, Algorithms for Convex Optimization have revolutionized algorithm design, both for discrete and continuous optimization problems. For prob
Convex Optimization Algorithms
Language: en
Pages: 576
Authors: Dimitri Bertsekas
Categories: Mathematics
Type: BOOK - Published: 2015-02-01 - Publisher: Athena Scientific

DOWNLOAD EBOOK

This book provides a comprehensive and accessible presentation of algorithms for solving convex optimization problems. It relies on rigorous mathematical analys