Search Results for author: Aleksandra Korolova

Found 12 papers, 3 papers with code

Stability and Multigroup Fairness in Ranking with Uncertain Predictions

no code implementations14 Feb 2024 Siddartha Devic, Aleksandra Korolova, David Kempe, Vatsal Sharan

However, when predictors trained for classification tasks have intrinsic uncertainty, it is not obvious how this uncertainty should be represented in the derived rankings.

Fairness

Fairness in Matching under Uncertainty

no code implementations8 Feb 2023 Siddartha Devic, David Kempe, Vatsal Sharan, Aleksandra Korolova

The prevalence and importance of algorithmic two-sided marketplaces has drawn attention to the issue of fairness in such settings.

Fairness

"You Can't Fix What You Can't Measure": Privately Measuring Demographic Performance Disparities in Federated Learning

1 code implementation24 Jun 2022 Marc Juarez, Aleksandra Korolova

As in traditional machine learning models, models trained with federated learning may exhibit disparate performance across demographic groups.

Federated Learning

Robust Allocations with Diversity Constraints

no code implementations NeurIPS 2021 Zeyu Shen, Lodewijk Gelauff, Ashish Goel, Aleksandra Korolova, Kamesh Munagala

We show in a formal sense that the Nash Welfare rule that maximizes product of agent values is uniquely positioned to be robust when diversity constraints are introduced, while almost all other natural allocation rules fail this criterion.

The power of synergy in differential privacy: Combining a small curator with local randomizers

no code implementations18 Dec 2019 Amos Beimel, Aleksandra Korolova, Kobbi Nissim, Or Sheffet, Uri Stemmer

Motivated by the desire to bridge the utility gap between local and trusted curator models of differential privacy for practical applications, we initiate the theoretical study of a hybrid model introduced by "Blender" [Avent et al.,\ USENIX Security '17], in which differentially private protocols of n agents that work in the local-model are assisted by a differentially private curator that has access to the data of m additional users.

Two-sample testing

Preference-Informed Fairness

no code implementations3 Apr 2019 Michael P. Kim, Aleksandra Korolova, Guy N. Rothblum, Gal Yona

We introduce and study a new notion of preference-informed individual fairness (PIIF) that is a relaxation of both individual fairness and envy-freeness.

Decision Making Fairness

The Power of The Hybrid Model for Mean Estimation

no code implementations29 Nov 2018 Brendan Avent, Yatharth Dubey, Aleksandra Korolova

We explore the power of the hybrid model of differential privacy (DP), in which some users desire the guarantees of the local model of DP and others are content with receiving the trusted-curator model guarantees.

Privacy Loss in Apple's Implementation of Differential Privacy on MacOS 10.12

no code implementations8 Sep 2017 Jun Tang, Aleksandra Korolova, Xiaolong Bai, Xueqiang Wang, Xiao-Feng Wang

We discover and describe Apple's set-up for differentially private data processing, including the overall data pipeline, the parameters used for differentially private perturbation of each piece of data, and the frequency with which such data is sent to Apple's servers.

Management

BLENDER: Enabling Local Search with a Hybrid Differential Privacy Model

no code implementations2 May 2017 Brendan Avent, Aleksandra Korolova, David Zeber, Torgeir Hovden, Benjamin Livshits

We propose a hybrid model of differential privacy that considers a combination of regular and opt-in users who desire the differential privacy guarantees of the local privacy model and the trusted curator model, respectively.

RAPPOR: Randomized Aggregatable Privacy-Preserving Ordinal Response

1 code implementation25 Jul 2014 Úlfar Erlingsson, Vasyl Pihur, Aleksandra Korolova

Randomized Aggregatable Privacy-Preserving Ordinal Response, or RAPPOR, is a technology for crowdsourcing statistics from end-user client software, anonymously, with strong privacy guarantees.

Cryptography and Security

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