Learn from Others and Be Yourself in Heterogeneous Federated Learning
National Institute of Japanese Literature · Wuhan University
Abstract
Federated learning has emerged as an important distributed learning paradigm, which normally involves collaborative updating with others and local updating on private data. However, heterogeneity problem and catastrophic forgetting bring distinctive challenges. First, due to non-i.i.d (identically and independently distributed) data and heterogeneous architectures, models suffer performance degradation on other domains and communication barrier with participants models. Second, in local updating, model is separately optimized on private data, which is prone to overfit current data distribution and forgets previously acquired knowledge, resulting in catastrophic forgetting. In this work, we propose FCCL…
Citation impact
- FWCI
- 25.35
- Percentile
- 100%
- References
- 141
Authors
3Topics & keywords
- Forgetting
- Computer science
- Overfitting
- Artificial intelligence
- Representation (politics)
- Independent and identically distributed random variables
- Machine learning
- Artificial neural network