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Toward Understanding the Influence of Individual Clients in Federated Learning

Yihao Xue, Chaoyue Niu, Zhenzhe Zheng, Shaojie Tang, Chengfei Lyu, Fan Wu, Guihai Chen

2021Proceedings of the AAAI Conference on Artificial Intelligence45 citationsDOIOpen Access PDF

Abstract

Federated learning allows mobile clients to jointly train a global model without sending their private data to a central server. Extensive works have studied the performance guarantee of the global model, however, it is still unclear how each individual client influences the collaborative training process. In this work, we defined a new notion, called {\em Fed-Influence}, to quantify this influence over the model parameters, and proposed an effective and efficient algorithm to estimate this metric. In particular, our design satisfies several desirable properties: (1) it requires neither retraining nor retracing, adding only linear computational overhead to clients and the server; (2) it strictly maintains the tenets of federated learning, without revealing any client's local private data; and (3) it works well on both convex and non-convex loss functions, and does not require the final model to be optimal. Empirical results on a synthetic dataset and the FEMNIST dataset demonstrate that our estimation method can approximate Fed-Influence with small bias. Further, we show an application of Fed-Influence in model debugging.

Topics & Concepts

Computer scienceFederated learningMetric (unit)DebuggingProcess (computing)Overhead (engineering)RetrainingServerRegular polygonScheme (mathematics)Machine learningDistributed computingArtificial intelligenceComputer networkProgramming languageMathematical analysisOperations managementInternational tradeMathematicsEconomicsGeometryBusinessPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesMobile Crowdsensing and Crowdsourcing
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