TL;DR
FedPref introduces a novel federated learning algorithm designed to handle preference heterogeneity among clients with multiple objectives, improving personalization and performance in complex, real-world scenarios.
Contribution
This work presents FedPref, the first algorithm tailored for personalized federated learning with preference heterogeneity, and introduces multi-objective metrics for evaluating FL performance.
Findings
FedPref outperforms existing algorithms across various problems and architectures.
The new multi-objective evaluation metrics provide deeper insights into FL performance.
Preference heterogeneity significantly impacts federated learning effectiveness.
Abstract
Federated Learning (FL) is a distributed machine learning strategy, developed for settings where training data is owned by distributed devices and cannot be shared. FL circumvents this constraint by carrying out model training in distribution. The parameters of these local models are shared intermittently among participants and aggregated to enhance model accuracy. This strategy has been rapidly adopted by the industry in efforts to overcome privacy and resource constraints in model training. However, the application of FL to real-world settings brings additional challenges associated with heterogeneity between participants. Research into mitigating these difficulties in FL has largely focused on only two types of heterogeneity: the unbalanced distribution of training data, and differences in client resources. Yet more types of heterogeneity are becoming relevant as the capability of FL…
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