Training Large-Vocabulary Neural Language Models by Private Federated Learning for Resource-Constrained Devices (2207.08988v1)
Abstract: Federated Learning (FL) is a technique to train models using data distributed across devices. Differential Privacy (DP) provides a formal privacy guarantee for sensitive data. Our goal is to train a large neural network LLM (NNLM) on compute-constrained devices while preserving privacy using FL and DP. However, the DP-noise introduced to the model increases as the model size grows, which often prevents convergence. We propose Partial Embedding Updates (PEU), a novel technique to decrease noise by decreasing payload size. Furthermore, we adopt Low Rank Adaptation (LoRA) and Noise Contrastive Estimation (NCE) to reduce the memory demands of large models on compute-constrained devices. This combination of techniques makes it possible to train large-vocabulary LLMs while preserving accuracy and privacy.
- Mingbin Xu (12 papers)
- Congzheng Song (23 papers)
- Ye Tian (190 papers)
- Neha Agrawal (2 papers)
- Filip Granqvist (7 papers)
- Rogier van Dalen (14 papers)
- Xiao Zhang (435 papers)
- Arturo Argueta (5 papers)
- Shiyi Han (7 papers)
- Yaqiao Deng (3 papers)
- Leo Liu (11 papers)
- Anmol Walia (2 papers)
- Alex Jin (4 papers)