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Optimization Methods for Supervised Machine Learning: From Linear Models
  to Deep Learning

Optimization Methods for Supervised Machine Learning: From Linear Models to Deep Learning

30 June 2017
Frank E. Curtis
K. Scheinberg
ArXivPDFHTML

Papers citing "Optimization Methods for Supervised Machine Learning: From Linear Models to Deep Learning"

6 / 6 papers shown
Title
When Deep Learning Meets Polyhedral Theory: A Survey
When Deep Learning Meets Polyhedral Theory: A Survey
Joey Huchette
Gonzalo Muñoz
Thiago Serra
Calvin Tsay
AI4CE
94
32
0
29 Apr 2023
First-Order Methods for Convex Optimization
First-Order Methods for Convex Optimization
Pavel Dvurechensky
Mathias Staudigl
Shimrit Shtern
ODL
18
25
0
04 Jan 2021
Adaptive Stochastic Optimization
Adaptive Stochastic Optimization
Frank E. Curtis
K. Scheinberg
ODL
8
29
0
18 Jan 2020
Optimization Problems for Machine Learning: A Survey
Optimization Problems for Machine Learning: A Survey
Claudio Gambella
Bissan Ghaddar
Joe Naoum-Sawaya
AI4CE
30
178
0
16 Jan 2019
Predicting Tactical Solutions to Operational Planning Problems under
  Imperfect Information
Predicting Tactical Solutions to Operational Planning Problems under Imperfect Information
Eric Larsen
Sébastien Lachapelle
Yoshua Bengio
Emma Frejinger
Simon Lacoste-Julien
Andrea Lodi
25
46
0
31 Jul 2018
Proximal Gradient Method with Extrapolation and Line Search for a Class
  of Nonconvex and Nonsmooth Problems
Proximal Gradient Method with Extrapolation and Line Search for a Class of Nonconvex and Nonsmooth Problems
Lei Yang
35
22
0
18 Nov 2017
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