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Paul Grigas
Paul Grigas
Assistant Professor, UC Berkeley
Verified email at berkeley.edu - Homepage
Title
Cited by
Cited by
Year
Smart “predict, then optimize”
AN Elmachtoub, P Grigas
Management Science 68 (1), 9-26, 2022
5982022
New analysis and results for the Frank–Wolfe method
RM Freund, P Grigas
Mathematical Programming 155 (1), 199-230, 2016
1822016
An extended Frank--Wolfe method with “in-face” directions, and its application to low-rank matrix completion
RM Freund, P Grigas, R Mazumder
SIAM Journal on optimization 27 (1), 319-346, 2017
1262017
Generalization bounds in the predict-then-optimize framework
O El Balghiti, AN Elmachtoub, P Grigas, A Tewari
Advances in neural information processing systems 32, 2019
842019
A new perspective on boosting in linear regression via subgradient optimization and relatives
R M. Freund, P Grigas, R Mazumder
The Annals of Statistics 45 (6), 2328-2364, 2017
422017
Risk bounds and calibration for a smart predict-then-optimize method
H Liu, P Grigas
Advances in Neural Information Processing Systems 34, 22083-22094, 2021
222021
Integrated conditional estimation-optimization
M Qi, P Grigas, ZJM Shen
arXiv preprint arXiv:2110.12351, 2021
21*2021
Profit maximization for online advertising demand-side platforms
P Grigas, A Lobos, Z Wen, K Lee
Proceedings of the ADKDD'17, 1-7, 2017
202017
Adaboost and forward stagewise regression are first-order convex optimization methods
RM Freund, P Grigas, R Mazumder
arXiv preprint arXiv:1307.1192, 2013
192013
Ch3MS-RF: a random forest model for chemical characterization and improved quantification of unidentified atmospheric organics detected by chromatography–mass spectrometry …
EB Franklin, LD Yee, B Aumont, RJ Weber, P Grigas, AH Goldstein
Atmospheric Measurement Techniques 15 (12), 3779-3803, 2022
122022
Stochastic in-face frank-wolfe methods for non-convex optimization and sparse neural network training
P Grigas, A Lobos, N Vermeersch
arXiv preprint arXiv:1906.03580, 2019
72019
Incremental forward stagewise regression: Computational complexity and connections to lasso
RM Freund, P Grigas, R Mazumder
URL http://www. esat. keluwen. be/sista/ROKS2013. Available on-line, 2013
72013
Joint online learning and decision-making via dual mirror descent
A Lobos, P Grigas, Z Wen
International Conference on Machine Learning, 7080-7089, 2021
62021
Condition number analysis of logistic regression, and its implications for standard first-order solution methods
RM Freund, P Grigas, R Mazumder
arXiv preprint arXiv:1810.08727, 2018
62018
Optimal bidding, allocation and budget spending for a demand side platform under many auction types
A Lobos, P Grigas, Z Wen, K Lee
arXiv preprint arXiv:1805.11645, 2018
62018
Active learning in the predict-then-optimize framework: A margin-based approach
M Liu, P Grigas, H Liu, ZJM Shen
arXiv preprint arXiv:2305.06584, 2023
52023
Online contextual decision-making with a smart predict-then-optimize method
H Liu, P Grigas
arXiv preprint arXiv:2206.07316, 2022
42022
Optimal Bidding, Allocation, and Budget Spending for a Demand-Side Platform with Generic Auctions
P Grigas, A Lobos, Z Wen, KC Lee
Allocation, and Budget Spending for a Demand-Side Platform with Generic …, 2021
32021
Methods for convex optimization and statistical learning
PPE Grigas
Massachusetts Institute of Technology, 2016
32016
New penalized stochastic gradient methods for linearly constrained strongly convex optimization
M Li, P Grigas, A Atamturk
arXiv preprint arXiv:2202.07155, 2022
22022
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