LGDCMLJul 2, 2019

Astraea: Self-balancing Federated Learning for Improving Classification Accuracy of Mobile Deep Learning Applications

arXiv:1907.01132v2237 citations
Originality Highly original
AI Analysis

This addresses accuracy degradation in federated learning for mobile and IoT applications due to data imbalance, offering a novel solution with significant performance gains.

The paper tackles the problem of imbalanced data distribution in federated learning, which degrades accuracy, by proposing Astraea, a self-balancing framework that improves top-1 accuracy by +5.59% on imbalanced EMNIST and +5.89% on imbalanced CINIC-10 compared to FedAvg, while reducing communication traffic by 82%.

Federated learning (FL) is a distributed deep learning method which enables multiple participants, such as mobile phones and IoT devices, to contribute a neural network model while their private training data remains in local devices. This distributed approach is promising in the edge computing system where have a large corpus of decentralized data and require high privacy. However, unlike the common training dataset, the data distribution of the edge computing system is imbalanced which will introduce biases in the model training and cause a decrease in accuracy of federated learning applications. In this paper, we demonstrate that the imbalanced distributed training data will cause accuracy degradation in FL. To counter this problem, we build a self-balancing federated learning framework call Astraea, which alleviates the imbalances by 1) Global data distribution based data augmentation, and 2) Mediator based multi-client rescheduling. The proposed framework relieves global imbalance by runtime data augmentation, and for averaging the local imbalance, it creates the mediator to reschedule the training of clients based on Kullback-Leibler divergence (KLD) of their data distribution. Compared with FedAvg, the state-of-the-art FL algorithm, Astraea shows +5.59% and +5.89% improvement of top-1 accuracy on the imbalanced EMNIST and imbalanced CINIC-10 datasets, respectively. Meanwhile, the communication traffic of Astraea can be 82% lower than that of FedAvg.

Code Implementations1 repo
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