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Dispersion for Data-Driven Algorithm Design, Online Learning, and
  Private Optimization
v1v2v3v4 (latest)

Dispersion for Data-Driven Algorithm Design, Online Learning, and Private Optimization

8 November 2017
Maria-Florina Balcan
Travis Dick
Ellen Vitercik
ArXiv (abs)PDFHTML

Papers citing "Dispersion for Data-Driven Algorithm Design, Online Learning, and Private Optimization"

21 / 21 papers shown
Title
Tuning Algorithmic and Architectural Hyperparameters in Graph-Based Semi-Supervised Learning with Provable Guarantees
Tuning Algorithmic and Architectural Hyperparameters in Graph-Based Semi-Supervised Learning with Provable Guarantees
Ally Yalei Du
Eric Huang
Dravyansh Sharma
152
1
0
18 Feb 2025
Offline-to-online hyperparameter transfer for stochastic bandits
Dravyansh Sharma
Arun Sai Suggala
OffRL
103
4
0
06 Jan 2025
Learning-Based Heavy Hitters and Flow Frequency Estimation in Streams
Learning-Based Heavy Hitters and Flow Frequency Estimation in Streams
Rana Shahout
Michael Mitzenmacher
70
4
0
24 Jun 2024
Online Algorithms with Uncertainty-Quantified Predictions
Online Algorithms with Uncertainty-Quantified Predictions
Bo Sun
Jerry Huang
Nicolas H. Christianson
Mohammad Hajiesmaili
Adam Wierman
Raouf Boutaba
75
6
0
17 Oct 2023
New Guarantees for Learning Revenue Maximizing Menus of Lotteries and
  Two-Part Tariffs
New Guarantees for Learning Revenue Maximizing Menus of Lotteries and Two-Part Tariffs
Maria-Florina Balcan
Hedyeh Beyhaghi
49
4
0
22 Feb 2023
Triangle and Four Cycle Counting with Predictions in Graph Streams
Triangle and Four Cycle Counting with Predictions in Graph Streams
Justin Y. Chen
T. Eden
Piotr Indyk
Honghao Lin
Shyam Narayanan
R. Rubinfeld
Sandeep Silwal
Tal Wagner
David P. Woodruff
Michael Zhang
131
23
0
17 Mar 2022
Learning Predictions for Algorithms with Predictions
Learning Predictions for Algorithms with Predictions
M. Khodak
Maria-Florina Balcan
Ameet Talwalkar
Sergei Vassilvitskii
87
27
0
18 Feb 2022
Online Learning for Min Sum Set Cover and Pandora's Box
Online Learning for Min Sum Set Cover and Pandora's Box
Evangelia Gergatsouli
Christos Tzamos
51
15
0
10 Feb 2022
Robustification of Online Graph Exploration Methods
Robustification of Online Graph Exploration Methods
Franziska Eberle
Alexander Lindermayr
Nicole Megow
L. Nolke
Jens Schlöter
AAMLOOD
64
22
0
10 Dec 2021
Faster Matchings via Learned Duals
Faster Matchings via Learned Duals
M. Dinitz
Sungjin Im
Thomas Lavastida
Benjamin Moseley
Sergei Vassilvitskii
51
69
0
20 Jul 2021
Data driven semi-supervised learning
Data driven semi-supervised learning
Maria-Florina Balcan
Dravyansh Sharma
64
16
0
18 Mar 2021
Generalization in portfolio-based algorithm selection
Generalization in portfolio-based algorithm selection
Maria-Florina Balcan
Tuomas Sandholm
Ellen Vitercik
73
12
0
24 Dec 2020
Learnable and Instance-Robust Predictions for Online Matching, Flows and
  Load Balancing
Learnable and Instance-Robust Predictions for Online Matching, Flows and Load Balancing
Thomas Lavastida
Benjamin Moseley
R. Ravi
Chenyang Xu
OOD
104
59
0
23 Nov 2020
Data-driven Algorithm Design
Data-driven Algorithm Design
Maria-Florina Balcan
31
2
0
14 Nov 2020
Faster Differentially Private Samplers via Rényi Divergence Analysis
  of Discretized Langevin MCMC
Faster Differentially Private Samplers via Rényi Divergence Analysis of Discretized Langevin MCMC
Arun Ganesh
Kunal Talwar
FedML
81
41
0
27 Oct 2020
Refined bounds for algorithm configuration: The knife-edge of dual class
  approximability
Refined bounds for algorithm configuration: The knife-edge of dual class approximability
Maria-Florina Balcan
Tuomas Sandholm
Ellen Vitercik
63
15
0
21 Jun 2020
Smoothed Analysis of Online and Differentially Private Learning
Smoothed Analysis of Online and Differentially Private Learning
Nika Haghtalab
Tim Roughgarden
Abhishek Shetty
86
51
0
17 Jun 2020
Learning piecewise Lipschitz functions in changing environments
Learning piecewise Lipschitz functions in changing environments
Maria-Florina Balcan
Travis Dick
Dravyansh Sharma
28
2
0
22 Jul 2019
Automatic Discovery of Privacy-Utility Pareto Fronts
Automatic Discovery of Privacy-Utility Pareto Fronts
Brendan Avent
Javier I. González
Tom Diethe
Andrei Paleyes
Borja Balle
FedML
77
28
0
26 May 2019
Learning to Optimize Computational Resources: Frugal Training with
  Generalization Guarantees
Learning to Optimize Computational Resources: Frugal Training with Generalization Guarantees
Maria-Florina Balcan
Tuomas Sandholm
Ellen Vitercik
60
16
0
26 May 2019
Empirical Bayes Regret Minimization
Empirical Bayes Regret Minimization
Chih-Wei Hsu
Branislav Kveton
Ofer Meshi
Martin Mladenov
Csaba Szepesvári
77
13
0
04 Apr 2019
1