Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Ditto: Fair and Robust Federated Learning Through Personalization

About

Fairness and robustness are two important concerns for federated learning systems. In this work, we identify that robustness to data and model poisoning attacks and fairness, measured as the uniformity of performance across devices, are competing constraints in statistically heterogeneous networks. To address these constraints, we propose employing a simple, general framework for personalized federated learning, Ditto, that can inherently provide fairness and robustness benefits, and develop a scalable solver for it. Theoretically, we analyze the ability of Ditto to achieve fairness and robustness simultaneously on a class of linear problems. Empirically, across a suite of federated datasets, we show that Ditto not only achieves competitive performance relative to recent personalization methods, but also enables more accurate, robust, and fair models relative to state-of-the-art fair or robust baselines.

Tian Li, Shengyuan Hu, Ahmad Beirami, Virginia Smith• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-100 (test)
Accuracy76.64
3518
Image ClassificationCIFAR-10 (test)
Accuracy87.55
3381
Image ClassificationCIFAR-10
Accuracy72.75
507
Depth EstimationNYU v2 (test)--
423
Image ClassificationPACS (test)
Average Accuracy80.03
254
Image ClassificationFashionMNIST (test)
Accuracy88
218
Image ClassificationDomainNet (test)
Average Accuracy75.18
209
Surface Normal EstimationNYU v2 (test)
Mean Angle Distance (MAD)23.96
206
Image ClassificationMiniImagenet
Accuracy32.3
206
Semantic segmentationNYUD v2 (test)
mIoU41.49
187
Showing 10 of 116 rows
...

Other info

Follow for update