Applications abound in which optimization problems must be repeatedly solved, each time with new (but similar) data. Analytic optimization algorithms can be hand-designed to provably solve these problems in an iterative fashion. On one hand, data-driven algorithms can "learn to optimize" (L2O) with much fewer iterations and similar cost per iteration as general-purpose optimization algorithms. On the other hand, unfortunately, many L2O algorithms lack converge guarantees. To fuse the advantages of these approaches, we present a Safe-L2O framework. Safe-L2O updates incorporate a safeguard to guarantee convergence for convex problems with proximal and/or gradient oracles. The safeguard is simple and computationally cheap to implement, and it ...
We consider unconstrained randomized optimization of smooth convex functions in the gradient-free se...
Finding multiple solutions of non-convex optimization problems is a ubiquitous yet challenging task....
Data-rich applications in machine-learning and control have motivated an intense research on large-s...
Applications abound in which optimization problems must be repeatedly solved, each time with new (bu...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Machine learning (ML) has evolved dramatically over recent decades, from relative infancy to a pract...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
In many machine learning problems, an objective is required to be optimized with respect to some co...
Convex optimization has developed a wide variety of useful tools critical to many applications in ma...
Analysis of the convergence rates of modern convex optimization algorithms can be achived through bi...
Thesis (Ph.D.)--University of Washington, 2017Convex optimization is more popular than ever, with ex...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Gradient boosting is a state-of-the-art prediction technique that sequentially produces a model in t...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We consider unconstrained randomized optimization of smooth convex functions in the gradient-free se...
Finding multiple solutions of non-convex optimization problems is a ubiquitous yet challenging task....
Data-rich applications in machine-learning and control have motivated an intense research on large-s...
Applications abound in which optimization problems must be repeatedly solved, each time with new (bu...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Machine learning (ML) has evolved dramatically over recent decades, from relative infancy to a pract...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
In many machine learning problems, an objective is required to be optimized with respect to some co...
Convex optimization has developed a wide variety of useful tools critical to many applications in ma...
Analysis of the convergence rates of modern convex optimization algorithms can be achived through bi...
Thesis (Ph.D.)--University of Washington, 2017Convex optimization is more popular than ever, with ex...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Gradient boosting is a state-of-the-art prediction technique that sequentially produces a model in t...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We consider unconstrained randomized optimization of smooth convex functions in the gradient-free se...
Finding multiple solutions of non-convex optimization problems is a ubiquitous yet challenging task....
Data-rich applications in machine-learning and control have motivated an intense research on large-s...