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Direction is what you need: Improving Word Embedding Compression in Large Language Models (2106.08181v2)

Published 15 Jun 2021 in cs.CL

Abstract: The adoption of Transformer-based models in NLP has led to great success using a massive number of parameters. However, due to deployment constraints in edge devices, there has been a rising interest in the compression of these models to improve their inference time and memory footprint. This paper presents a novel loss objective to compress token embeddings in the Transformer-based models by leveraging an AutoEncoder architecture. More specifically, we emphasize the importance of the direction of compressed embeddings with respect to original uncompressed embeddings. The proposed method is task-agnostic and does not require further LLMing pre-training. Our method significantly outperforms the commonly used SVD-based matrix-factorization approach in terms of initial LLM Perplexity. Moreover, we evaluate our proposed approach over SQuAD v1.1 dataset and several downstream tasks from the GLUE benchmark, where we also outperform the baseline in most scenarios. Our code is public.

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