压缩大型判别特征空间变换的最优量化和位分配

E. Marcheret, V. Goel, P. Olsen
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引用次数: 5

摘要

利用最小电话误差(MPE)目标函数对特征空间进行判别训练可以显著提高准确率。然而,这些增益是以存储转换所需的高内存成本为代价的。在之前的一篇论文中,我们通过量化变换参数减少了94%的内存需求。我们使用维度相关的量化表,并通过固定的转换参数分配量化值来学习量化值。在本文中,我们改进和扩展了这些技术,在不降低句子错误率的情况下,进一步减少了35%的记忆。讨论了一种将变换参数赋给量化值的原则性方法。我们还展示了如何使用Viterbi算法逐步减少内存,以最优地将可变数量的比特分配给维度相关的量化表。所描述的技术也可以应用于一般线性变换的量化——一个应该引起更广泛兴趣的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal quantization and bit allocation for compressing large discriminative feature space transforms
Discriminative training of the feature space using the minimum phone error (MPE) objective function has been shown to yield remarkable accuracy improvements. These gains, however, come at a high cost of memory required to store the transform. In a previous paper we reduced this memory requirement by 94% by quantizing the transform parameters. We used dimension dependent quantization tables and learned the quantization values with a fixed assignment of transform parameters to quantization values. In this paper we refine and extend the techniques to attain a further 35% reduction in memory with no degradation in sentence error rate. We discuss a principled method to assign the transform parameters to quantization values. We also show how the memory can be gradually reduced using a Viterbi algorithm to optimally assign variable number of bits to dimension dependent quantization tables. The techniques described could also be applied to the quantization of general linear transforms - a problem that should be of wider interest.
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