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Towards Efficient Replay in Federated Incremental Learning

About

In Federated Learning (FL), the data in each client is typically assumed fixed or static. However, data often comes in an incremental manner in real-world applications, where the data domain may increase dynamically. In this work, we study catastrophic forgetting with data heterogeneity in Federated Incremental Learning (FIL) scenarios where edge clients may lack enough storage space to retain full data. We propose to employ a simple, generic framework for FIL named Re-Fed, which can coordinate each client to cache important samples for replay. More specifically, when a new task arrives, each client first caches selected previous samples based on their global and local importance. Then, the client trains the local model with both the cached samples and the samples from the new task. Theoretically, we analyze the ability of Re-Fed to discover important samples for replay thus alleviating the catastrophic forgetting problem. Moreover, we empirically show that Re-Fed achieves competitive performance compared to state-of-the-art methods.

Yichen Li, Qunwei Li, Haozhao Wang, Ruixuan Li, Wenliang Zhong, Guannan Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Federated Class-Incremental LearningFCIL-M
Avg Acc82.75
14
Federated Domain-Incremental LearningFDIL
Aavg81.66
14
Federated Class-and-Domain-Incremental LearningFCDIL
Aavg80.74
14
Federated Class-Incremental LearningFCIL-A
Aavg74.18
14
Federated Class-Incremental LearningFCIL-H
Average Accuracy (Aavg)76.98
14
Streaming Federated Continual LearningCIFAR100 O=5 overlap
Average Accuracy8.61
8
Streaming Federated Continual LearningCIFAR100 O=4 overlap
Average Accuracy0.0729
8
Streaming Federated Continual LearningCIFAR100 O=2 overlap
Average Accuracy (AA)8.61
8
Streaming Federated Continual LearningCIFAR100 O=0 overlap
Average Accuracy (AA)10.12
8
Streaming Federated Continual LearningImageNet 100 O=5 overlap
Average Accuracy6.74
8
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