Today we are living in the era of big data, there is a pressing need for efficient, scalable and robust optimization methods to analyze the data we create and collect. Although Convex methods offer tractable solutions with global optimality, heuristic nonconvex methods are often more attractive in practice due to their superior efficiency and scalability. Moreover, for better representations of the data, the mathematical model we are building today are much more complicated, which often results in highly nonlinear and nonconvex optimizations problems. Both of these challenges require us to go beyond convex optimization. While nonconvex optimization is extraordinarily successful in practice, unlike convex optimization, guaranteeing the corre...
Recent developments in (Global) Optimization are surveyed in this paper. We collected and commented ...
This chapter is devoted to the blackbox subgradient algorithms with the minimal requirements for the...
Standard gradient descent-ascent (GDA)-type algorithms can only find stationary points in nonconvex ...
Nonconvex optimization is NP-hard, even the goal is to compute a local minimizer. In applied discipl...
Nonconvex optimization naturally arises in many machine learning problems. Machine learning research...
384 pagesContinuous optimization has become a prevalent tool across the sciences and engineering. Mo...
The purpose of this thesis is the design of algorithms that can be used to determine optimal solutio...
Non-convex optimization plays an important role in recent advances of machine learning. A large numb...
In this paper we present the nonconvex exterior-point optimization solver (NExOS) -- a novel first-o...
Finding globally-optimal solutions in quadratic nonconvex optimisation problems deterministically at...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
Complexity theory refers to the asymptotic analysis of problems and algorithms. How efficient is a...
Non-convex optimization often plays an important role in many machine learning problems. Study the e...
Thesis (Ph.D.)--University of Washington, 2022In control and machine learning, the primary goal is t...
textLow rank matrices lie at the heart of many techniques in scientific computing and machine learni...
Recent developments in (Global) Optimization are surveyed in this paper. We collected and commented ...
This chapter is devoted to the blackbox subgradient algorithms with the minimal requirements for the...
Standard gradient descent-ascent (GDA)-type algorithms can only find stationary points in nonconvex ...
Nonconvex optimization is NP-hard, even the goal is to compute a local minimizer. In applied discipl...
Nonconvex optimization naturally arises in many machine learning problems. Machine learning research...
384 pagesContinuous optimization has become a prevalent tool across the sciences and engineering. Mo...
The purpose of this thesis is the design of algorithms that can be used to determine optimal solutio...
Non-convex optimization plays an important role in recent advances of machine learning. A large numb...
In this paper we present the nonconvex exterior-point optimization solver (NExOS) -- a novel first-o...
Finding globally-optimal solutions in quadratic nonconvex optimisation problems deterministically at...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
Complexity theory refers to the asymptotic analysis of problems and algorithms. How efficient is a...
Non-convex optimization often plays an important role in many machine learning problems. Study the e...
Thesis (Ph.D.)--University of Washington, 2022In control and machine learning, the primary goal is t...
textLow rank matrices lie at the heart of many techniques in scientific computing and machine learni...
Recent developments in (Global) Optimization are surveyed in this paper. We collected and commented ...
This chapter is devoted to the blackbox subgradient algorithms with the minimal requirements for the...
Standard gradient descent-ascent (GDA)-type algorithms can only find stationary points in nonconvex ...