Losparse: Structured Compression Of Large Language Models Based On Low-rank And Sparse Approximation · The Large Language Model Bible Contribute to LLM-Bible

Losparse: Structured Compression Of Large Language Models Based On Low-rank And Sparse Approximation

Li Yixiao, Yu Yifan, Zhang Qingru, Liang Chen, He Pengcheng, Chen Weizhu, Zhao Tuo. Arxiv 2023

[Paper]    
Applications Efficiency And Optimization Model Architecture Pretraining Methods Pruning Quantization Transformer

Transformer models have achieved remarkable results in various natural language tasks, but they are often prohibitively large, requiring massive memories and computational resources. To reduce the size and complexity of these models, we propose LoSparse (Low-Rank and Sparse approximation), a novel model compression technique that approximates a weight matrix by the sum of a low-rank matrix and a sparse matrix. Our method combines the advantages of both low-rank approximations and pruning, while avoiding their limitations. Low-rank approximation compresses the coherent and expressive parts in neurons, while pruning removes the incoherent and non-expressive parts in neurons. Pruning enhances the diversity of low-rank approximations, and low-rank approximation prevents pruning from losing too many expressive neurons. We evaluate our method on natural language understanding, question answering, and natural language generation tasks. We show that it significantly outperforms existing compression methods.

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