Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization problems in which the objective is the sum of a very large number of sample costs. An evident obstacle in using traditional descent algorithms for solving this class of problems is their prohibitive computational complexity when the number of component functions in the ERM problem is large. The main goal of this thesis is to study different approaches to solve these large-scale ERM problems. We begin by focusing on incremental and stochastic methods which split the training samples into smaller sets across time to lower the computation burden of traditional descent algorithms. We develop and analyze convergent stochastic variants of quasi-New...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
Abstract The amount of data available in the world is growing faster than our ability to deal with i...
Thesis (Ph.D.)--University of Washington, 2018To learn from large datasets, modern machine learning ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
The rising amount of data has changed the classical approaches in statistical modeling significantly...
Modern machine learning systems pose several new statistical, scalability, privacy and ethical chall...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
Current machine learning practice requires solving huge-scale empirical risk minimization problems q...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This work considers optimization methods for large-scale machine learning (ML). Optimization in ML ...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
© 2017 Neural information processing systems foundation. All rights reserved. Empirical risk minimiz...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
US Transportation Collection2020PDFTech ReportLi, TianyangLiu, LiuKyrillidis, AnastasiosCaramanis, C...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
Abstract The amount of data available in the world is growing faster than our ability to deal with i...
Thesis (Ph.D.)--University of Washington, 2018To learn from large datasets, modern machine learning ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
The rising amount of data has changed the classical approaches in statistical modeling significantly...
Modern machine learning systems pose several new statistical, scalability, privacy and ethical chall...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
Current machine learning practice requires solving huge-scale empirical risk minimization problems q...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This work considers optimization methods for large-scale machine learning (ML). Optimization in ML ...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
© 2017 Neural information processing systems foundation. All rights reserved. Empirical risk minimiz...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
US Transportation Collection2020PDFTech ReportLi, TianyangLiu, LiuKyrillidis, AnastasiosCaramanis, C...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
Abstract The amount of data available in the world is growing faster than our ability to deal with i...
Thesis (Ph.D.)--University of Washington, 2018To learn from large datasets, modern machine learning ...