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Sumit Mukherjee

Assessment of Differentially Private Synthetic Data for Utility and Fairness in End-to-End Machine Learning Pipelines for Tabular Data

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Oct 30, 2023
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A Mean Field Approach to Empirical Bayes Estimation in High-dimensional Linear Regression

Sep 28, 2023
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An Analysis of the Deployment of Models Trained on Private Tabular Synthetic Data: Unexpected Surprises

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Jun 15, 2021
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A machine learning pipeline for aiding school identification from child trafficking images

Jun 09, 2021
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Variational Inference in high-dimensional linear regression

Apr 25, 2021
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Reducing bias and increasing utility by federated generative modeling of medical images using a centralized adversary

Jan 18, 2021
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MACE: A Flexible Framework for Membership Privacy Estimation in Generative Models

Sep 11, 2020
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Protecting GANs against privacy attacks by preventing overfitting

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Jan 03, 2020
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Risks of Using Non-verified Open Data: A case study on using Machine Learning techniques for predicting Pregnancy Outcomes in India

Oct 21, 2019
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Comparative Studies on Decentralized Multiloop PID Controller Design Using Evolutionary Algorithms

Jan 05, 2013
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