LGNEJun 7, 2024

Towards Interpretable Deep Local Learning with Successive Gradient Reconciliation

arXiv:2406.05222v18 citations
Originality Incremental advance
AI Analysis

This work addresses the memory consumption issue in deep learning for researchers and practitioners, offering an incremental improvement to existing local learning methods.

The paper tackles the problem of memory-intensive global back-propagation in neural networks by proposing a local training strategy that reconciles gradients between neighboring modules, achieving competitive performance on ImageNet with over 40% memory savings.

Relieving the reliance of neural network training on a global back-propagation (BP) has emerged as a notable research topic due to the biological implausibility and huge memory consumption caused by BP. Among the existing solutions, local learning optimizes gradient-isolated modules of a neural network with local errors and has been proved to be effective even on large-scale datasets. However, the reconciliation among local errors has never been investigated. In this paper, we first theoretically study non-greedy layer-wise training and show that the convergence cannot be assured when the local gradient in a module w.r.t. its input is not reconciled with the local gradient in the previous module w.r.t. its output. Inspired by the theoretical result, we further propose a local training strategy that successively regularizes the gradient reconciliation between neighboring modules without breaking gradient isolation or introducing any learnable parameters. Our method can be integrated into both local-BP and BP-free settings. In experiments, we achieve significant performance improvements compared to previous methods. Particularly, our method for CNN and Transformer architectures on ImageNet is able to attain a competitive performance with global BP, saving more than 40% memory consumption.

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