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      OneBit: Towards Extremely Low-bit Large Language Models

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          Abstract

          Model quantification uses low bit-width values to represent the weight matrices of models, which is a promising approach to reduce both storage and computational overheads of deploying highly anticipated LLMs. However, existing quantization methods suffer severe performance degradation when the bit-width is extremely reduced, and thus focus on utilizing 4-bit or 8-bit values to quantize models. This paper boldly quantizes the weight matrices of LLMs to 1-bit, paving the way for the extremely low bit-width deployment of LLMs. For this target, we introduce a 1-bit quantization-aware training (QAT) framework named OneBit, including a novel 1-bit parameter representation method to better quantize LLMs as well as an effective parameter initialization method based on matrix decomposition to improve the convergence speed of the QAT framework. Sufficient experimental results indicate that OneBit achieves good performance (at least 83% of the non-quantized performance) with robust training processes when only using 1-bit weight matrices.

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          Author and article information

          Journal
          17 February 2024
          Article
          2402.11295
          a13608b3-5b64-4249-8386-18f3279e7c51

          http://creativecommons.org/licenses/by/4.0/

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          15 pages, 6 figures, 5 tables
          cs.CL

          Theoretical computer science
          Theoretical computer science

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