Poster "differential privacy" Papers

75 papers found • Page 1 of 2

Adaptive Batch Size for Privately Finding Second-Order Stationary Points

Daogao Liu, Kunal Talwar

ICLR 2025arXiv:2410.07502
2
citations

A Generalized Binary Tree Mechanism for Private Approximation of All-Pair Shortest Distances

Zongrui Zou, Chenglin Fan, Michael Dinitz et al.

NEURIPS 2025
1
citations

An Iterative Algorithm for Differentially Private $k$-PCA with Adaptive Noise

Johanna Düngler, Amartya Sanyal

NEURIPS 2025arXiv:2508.10879

A Private Approximation of the 2nd-Moment Matrix of Any Subsamplable Input

Bar Mahpud, Or Sheffet

NEURIPS 2025arXiv:2505.14251

Controlling The Spread of Epidemics on Networks with Differential Privacy

Dũng Nguyen, Aravind Srinivasan, Renata Valieva et al.

NEURIPS 2025arXiv:2506.00745

Data-adaptive Differentially Private Prompt Synthesis for In-Context Learning

Fengyu Gao, Ruida Zhou, Tianhao Wang et al.

ICLR 2025arXiv:2410.12085
5
citations

Deep Learning with Plausible Deniability

Wenxuan Bao, Shan Jin, Hadi Abdullah et al.

NEURIPS 2025

Differentially Private Bilevel Optimization: Efficient Algorithms with Near-Optimal Rates

Andrew Lowy, Daogao Liu

NEURIPS 2025arXiv:2506.12994
1
citations

Differentially Private Federated Low Rank Adaptation Beyond Fixed-Matrix

Ming Wen, Jiaqi Zhu, Yuedong Xu et al.

NEURIPS 2025arXiv:2507.09990

Differentially Private Gomory-Hu Trees

Anders Aamand, Justin Chen, Mina Dalirrooyfard et al.

NEURIPS 2025arXiv:2408.01798
2
citations

Differentially private learners for heterogeneous treatment effects

Maresa Schröder, Valentyn Melnychuk, Stefan Feuerriegel

ICLR 2025arXiv:2503.03486
3
citations

Differentially Private Relational Learning with Entity-level Privacy Guarantees

Yinan Huang, Haoteng Yin, Eli Chien et al.

NEURIPS 2025arXiv:2506.08347

Differential Privacy for Euclidean Jordan Algebra with Applications to Private Symmetric Cone Programming

Zhao Song, Jianfei Xue, Lichen Zhang

NEURIPS 2025arXiv:2509.16915

Diffusion Federated Dataset

SEOKJU HAHN, Junghye Lee

NEURIPS 2025

DiSK: Differentially Private Optimizer with Simplified Kalman Filter for Noise Reduction

Xinwei Zhang, Zhiqi Bu, Borja Balle et al.

ICLR 2025arXiv:2410.03883
5
citations

Does Training with Synthetic Data Truly Protect Privacy?

Yunpeng Zhao, Jie Zhang

ICLR 2025arXiv:2502.12976
8
citations

Do You Really Need Public Data? Surrogate Public Data for Differential Privacy on Tabular Data

Shlomi Hod, Lucas Rosenblatt, Julia Stoyanovich

NEURIPS 2025arXiv:2504.14368
2
citations

Exploiting Hidden Symmetry to Improve Objective Perturbation for DP Linear Learners with a Nonsmooth L1-Norm

Du Chen, Geoffrey A. Chua

ICLR 2025

Hot-pluggable Federated Learning: Bridging General and Personalized FL via Dynamic Selection

Lei Shen, Zhenheng Tang, Lijun Wu et al.

ICLR 2025
4
citations

Multi-Class Support Vector Machine with Differential Privacy

Jinseong Park, Yujin Choi, Jaewook Lee

NEURIPS 2025arXiv:2510.04027

Nearly-Linear Time Private Hypothesis Selection with the Optimal Approximation Factor

Maryam Aliakbarpour, Zhan Shi, Ria Stevens et al.

NEURIPS 2025arXiv:2506.01162

Online robust locally differentially private learning for nonparametric regression

Chenfei Gu, Qiangqiang Zhang, Ting Li et al.

NEURIPS 2025

On the Sample Complexity of Differentially Private Policy Optimization

Yi He, Xingyu Zhou

NEURIPS 2025arXiv:2510.21060

Optimal Best Arm Identification under Differential Privacy

Marc Jourdan, Achraf Azize

NEURIPS 2025arXiv:2510.17348

Optimal Regret of Bandits under Differential Privacy

Achraf Azize, Yulian Wu, Junya Honda et al.

NEURIPS 2025

Privacy-Preserving Personalized Federated Prompt Learning for Multimodal Large Language Models

Linh Tran, Wei Sun, Stacy Patterson et al.

ICLR 2025arXiv:2501.13904
5
citations

Private Continual Counting of Unbounded Streams

Ben Jacobsen, Kassem Fawaz

NEURIPS 2025arXiv:2506.15018

Private Mechanism Design via Quantile Estimation

Yuanyuan Yang, Tao Xiao, Bhuvesh Kumar et al.

ICLR 2025

Private Online Learning against an Adaptive Adversary: Realizable and Agnostic Settings

Bo Li, Wei Wang, Peng Ye

NEURIPS 2025arXiv:2510.00574

Private Training Large-scale Models with Efficient DP-SGD

Liangyu Wang, Junxiao Wang, Jie Ren et al.

NEURIPS 2025

Scaling up the Banded Matrix Factorization Mechanism for Large Scale Differentially Private ML

Ryan McKenna

ICLR 2025

Towards hyperparameter-free optimization with differential privacy

Ruixuan Liu, Zhiqi Bu

ICLR 2025arXiv:2503.00703
7
citations

Unifying Re-Identification, Attribute Inference, and Data Reconstruction Risks in Differential Privacy

Bogdan Kulynych, Juan Gomez, Georgios Kaissis et al.

NEURIPS 2025arXiv:2507.06969
6
citations

All Rivers Run to the Sea: Private Learning with Asymmetric Flows

Yue Niu, Ramy E. Ali, Saurav Prakash et al.

CVPR 2024arXiv:2312.05264
3
citations

A New Linear Scaling Rule for Private Adaptive Hyperparameter Optimization

Ashwinee Panda, Xinyu Tang, Saeed Mahloujifar et al.

ICML 2024arXiv:2212.04486
15
citations

Auditing Private Prediction

Karan Chadha, Matthew Jagielski, Nicolas Papernot et al.

ICML 2024arXiv:2402.09403
9
citations

Beyond the Calibration Point: Mechanism Comparison in Differential Privacy

Georgios Kaissis, Stefan Kolek, Borja de Balle Pigem et al.

ICML 2024arXiv:2406.08918
10
citations

CaPS: Collaborative and Private Synthetic Data Generation from Distributed Sources

Sikha Pentyala, Mayana Pereira, Martine De Cock

ICML 2024arXiv:2402.08614
5
citations

CuTS: Customizable Tabular Synthetic Data Generation

Mark Vero, Mislav Balunovic, Martin Vechev

ICML 2024arXiv:2307.03577
10
citations

Delving into Differentially Private Transformer

Youlong Ding, Xueyang Wu, Yining meng et al.

ICML 2024arXiv:2405.18194
11
citations

Differentially Private Bias-Term Fine-tuning of Foundation Models

Zhiqi Bu, Yu-Xiang Wang, Sheng Zha et al.

ICML 2024arXiv:2210.00036
55
citations

Differentially Private Decentralized Learning with Random Walks

Edwige Cyffers, Aurélien Bellet, Jalaj Upadhyay

ICML 2024arXiv:2402.07471
9
citations

Differentially Private Domain Adaptation with Theoretical Guarantees

Raef Bassily, Corinna Cortes, Anqi Mao et al.

ICML 2024arXiv:2306.08838

Differentially private exact recovery for stochastic block models

Dung Nguyen, Anil Vullikanti

ICML 2024arXiv:2406.02644
5
citations

Differentially Private Post-Processing for Fair Regression

Ruicheng Xian, Qiaobo Li, Gautam Kamath et al.

ICML 2024arXiv:2405.04034
9
citations

Differentially Private Representation Learning via Image Captioning

Tom Sander, Yaodong Yu, Maziar Sanjabi et al.

ICML 2024arXiv:2403.02506
7
citations

Differentially Private Sum-Product Networks

Xenia Heilmann, Mattia Cerrato, Ernst Althaus

ICML 2024

Differentially Private Worst-group Risk Minimization

Xinyu Zhou, Raef Bassily

ICML 2024arXiv:2402.19437
6
citations

FedSC: Provable Federated Self-supervised Learning with Spectral Contrastive Objective over Non-i.i.d. Data

Shusen Jing, Anlan Yu, Shuai Zhang et al.

ICML 2024arXiv:2405.03949
3
citations

How Private are DP-SGD Implementations?

Lynn Chua, Badih Ghazi, Pritish Kamath et al.

ICML 2024arXiv:2403.17673
22
citations
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