CLFeb 19, 2024

Head-wise Shareable Attention for Large Language Models

arXiv:2402.11819v323 citationsh-index: 8EMNLP
Originality Incremental advance
AI Analysis

This work addresses memory constraints for deploying LLMs on edge devices, representing an incremental improvement over existing coarse-grained weight sharing techniques.

The paper tackles the problem of large memory usage in Large Language Models (LLMs) by proposing head-wise shareable attention methods, which reduce parameters while maintaining satisfactory performance, as demonstrated experimentally.

Large Language Models (LLMs) suffer from huge number of parameters, which restricts their deployment on edge devices. Weight sharing is one promising solution that encourages weight reuse, effectively reducing memory usage with less performance drop. However, current weight sharing techniques primarily focus on small-scale models like BERT and employ coarse-grained sharing rules, e.g., layer-wise. This becomes limiting given the prevalence of LLMs and sharing an entire layer or block obviously diminishes the flexibility of weight sharing. In this paper, we present a perspective on head-wise shareable attention for large language models. We further propose two memory-efficient methods that share parameters across attention heads, with a specific focus on LLMs. Both of them use the same dynamic strategy to select the shared weight matrices. The first method directly reuses the pre-trained weights without retraining, denoted as $\textbf{DirectShare}$. The second method first post-trains with constraint on weight matrix similarity and then shares, denoted as $\textbf{PostShare}$. Experimental results reveal our head-wise shared models still maintain satisfactory capabilities, demonstrating the feasibility of fine-grained weight sharing applied to LLMs.

Code Implementations2 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes