We consider projected Newton-type methods for solving large-scale optimization problems arising in machine learning and related fields. We first introduce an algorithmic framework for projected Newton-type methods by reviewing a canonical projected (quasi-)Newton method. This method, while conceptually pleasing, has a high computation cost per iteration. Thus, we discuss two variants that are more scalable, namely, two-metric projection and inexact projection methods. Finally, we show how to apply the Newton-type framework to handle non-smooth objectives. Examples are provided throughout the chapter to illustrate machine learning applications of our framework
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...
Four decades after their invention, quasi-Newton methods are still state of the art in unconstrained...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
We consider projected Newton-type methods for solving large-scale optimization problems arising in m...
We consider projected Newton-type methods for solving large-scale optimiza-tion problems arising in ...
The interplay between optimization and machine learning is one of the most important developments in...
This thesis aims at developing efficient algorithms for solving some fundamental engineering problem...
Minimal Learning Machine (MLM) is a distance-based supervised machine learning method for classifica...
International audienceNonsmoothness is often a curse for optimization; but it is sometimes a blessin...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
A fast Newton method is proposed for solving linear programs with a very large (# 10 ) number of...
We introduce a new second-order inertial method for machine learning called INDIAN, exploiting the g...
Abstract. In this paper, a truncated projected Newton-type algorithm is presented for solving large-...
The aim of this thesis is to develop scalable numerical optimization methods that can be used to add...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...
Four decades after their invention, quasi-Newton methods are still state of the art in unconstrained...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
We consider projected Newton-type methods for solving large-scale optimization problems arising in m...
We consider projected Newton-type methods for solving large-scale optimiza-tion problems arising in ...
The interplay between optimization and machine learning is one of the most important developments in...
This thesis aims at developing efficient algorithms for solving some fundamental engineering problem...
Minimal Learning Machine (MLM) is a distance-based supervised machine learning method for classifica...
International audienceNonsmoothness is often a curse for optimization; but it is sometimes a blessin...
textWith an immense growth of data, there is a great need for solving large-scale machine learning p...
A fast Newton method is proposed for solving linear programs with a very large (# 10 ) number of...
We introduce a new second-order inertial method for machine learning called INDIAN, exploiting the g...
Abstract. In this paper, a truncated projected Newton-type algorithm is presented for solving large-...
The aim of this thesis is to develop scalable numerical optimization methods that can be used to add...
An optimization algorithm for minimizing a smooth function over a convex set is de-scribed. Each ite...
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...
Four decades after their invention, quasi-Newton methods are still state of the art in unconstrained...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...