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Debarghya Mukherjee
Debarghya Mukherjee
Post-doctoral researcher, Princeton University
Verified email at umich.edu - Homepage
Title
Cited by
Cited by
Year
Two simple ways to learn individual fairness metrics from data
D Mukherjee, M Yurochkin, M Banerjee, Y Sun
International Conference on Machine Learning, 7097-7107, 2020
972020
Post-processing for individual fairness
F Petersen, D Mukherjee, Y Sun, M Yurochkin
Advances in Neural Information Processing Systems 34, 25944-25955, 2021
672021
Outlier-robust optimal transport
D Mukherjee, A Guha, JM Solomon, Y Sun, M Yurochkin
International Conference on Machine Learning, 7850-7860, 2021
552021
Does enforcing fairness mitigate biases caused by subpopulation shift?
S Maity, D Mukherjee, M Yurochkin, Y Sun
Advances in Neural Information Processing Systems 34, 25773-25784, 2021
202021
Domain Adaptation meets Individual Fairness. And they get along.
D Mukherjee, F Petersen, M Yurochkin, Y Sun
Advances in Neural Information Processing Systems 35, 28902-28913, 2022
152022
Optimal linear discriminators for the discrete choice model in growing dimensions
D Mukherjee, M Banerjee, Y Ritov
The Annals of Statistics 49 (6), 3324-3357, 2021
11*2021
There is no trade-off: enforcing fairness can improve accuracy
S Maity, D Mukherjee, M Yurochkin, Y Sun
102020
Markovian and non-Markovian processes with active decision making strategies For addressing the COVID-19 pandemic
H Eftekhari, D Mukherjee, M Banerjee, Y Ritov
arXiv preprint arXiv:2008.00375, 2020
92020
Deep neural networks for nonparametric interaction models with diverging dimension
S Bhattacharya, J Fan, D Mukherjee
arXiv preprint arXiv:2302.05851, 2023
42023
Asymptotic normality of a linear threshold estimator in fixed dimension with near-optimal rate
D Mukherjee, M Banerjee, D Mukherjee, Y Ritov
arXiv preprint arXiv:2001.06955, 2020
42020
Predictor-corrector algorithms for stochastic optimization under gradual distribution shift
S Maity, D Mukherjee, M Banerjee, Y Sun
arXiv preprint arXiv:2205.13575, 2022
32022
On robust learning in the canonical change point problem under heavy tailed errors in finite and growing dimensions
D Mukherjee, M Banerjee, Y Ritov
Electronic Journal of Statistics 16 (1), 1153-1252, 2022
32022
UTOPIA: Universally Trainable Optimal Prediction Intervals Aggregation
J Fan, J Ge, D Mukherjee
arXiv preprint arXiv:2306.16549, 2023
22023
Learning Mahalanobis Distance Metrics from Data
M Yurochkin, D Mukherjee, M Banerjee, Y Sun, S Upadhyay
US Patent App. 17/345,730, 2022
12022
Estimation of a score-explained non-randomized treatment effect in fixed and high dimensions
D Mukherjee, M Banerjee, Y Ritov
arXiv preprint arXiv:2102.11229, 2021
12021
Minimax Optimal rates of convergence in the shuffled regression, unlinked regression, and deconvolution under vanishing noise
C Durot, D Mukherjee
arXiv preprint arXiv:2404.09306, 2024
2024
Trade-off Between Dependence and Complexity for Nonparametric Learning--an Empirical Process Approach
N Deb, D Mukherjee
arXiv preprint arXiv:2401.08978, 2024
2024
Asymptotic normality of a change plane estimator in fixed dimension with near-optimal rate
D Mukherjee, M Banerjee, D Mukherjee, Y Ritov
Electronic Journal of Statistics 17 (2), 2289-2316, 2023
2023
Training individually fair machine learning algorithms via distributionally robust optimization
S Upadhyay, M Yurochkin, D Mukherjee, Y Sun, ARG Bower, SH Eftekhari, ...
US Patent App. 17/213,167, 2022
2022
Analysis of High Dimensional Statistical Models with Discontinuity
D Mukherjee
2022
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