LGAINEMay 1, 2024

Weight Sparsity Complements Activity Sparsity in Neuromorphic Language Models

arXiv:2405.00433v13 citationsh-index: 12ICONS
Originality Synthesis-oriented
AI Analysis

This work addresses efficiency in neuromorphic computing for language modeling, but it is incremental as it builds on existing sparsity methods applied to a new task.

The study investigated how combining weight sparsity with activity sparsity in neuromorphic language models affects efficiency and performance, finding that they complement each other without proportional performance drops on Penn Treebank and WikiText-2 datasets.

Activity and parameter sparsity are two standard methods of making neural networks computationally more efficient. Event-based architectures such as spiking neural networks (SNNs) naturally exhibit activity sparsity, and many methods exist to sparsify their connectivity by pruning weights. While the effect of weight pruning on feed-forward SNNs has been previously studied for computer vision tasks, the effects of pruning for complex sequence tasks like language modeling are less well studied since SNNs have traditionally struggled to achieve meaningful performance on these tasks. Using a recently published SNN-like architecture that works well on small-scale language modeling, we study the effects of weight pruning when combined with activity sparsity. Specifically, we study the trade-off between the multiplicative efficiency gains the combination affords and its effect on task performance for language modeling. To dissect the effects of the two sparsities, we conduct a comparative analysis between densely activated models and sparsely activated event-based models across varying degrees of connectivity sparsity. We demonstrate that sparse activity and sparse connectivity complement each other without a proportional drop in task performance for an event-based neural network trained on the Penn Treebank and WikiText-2 language modeling datasets. Our results suggest sparsely connected event-based neural networks are promising candidates for effective and efficient sequence modeling.

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