用标准语料库提高低资源语言的性能:一个分析

F. Grézl, M. Karafiát
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引用次数: 2

摘要

本文分析了在瓶颈串联系统的背景下,使用单一资源丰富的语言英语作为多语言技术的源语言的可行性。在不同的移植策略下,评估了源语言的数据量和绑定状态数对移植系统性能的影响。一般来说,增加数据量和详细程度都是积极的。随着平局州数量的增加,观察到的影响更大。改进后的神经网络结构对多语言移植很有用,并对其具体的移植过程进行了评价。采用原有的神经网络结构结合改进的移植自适应策略是最优的。在目标语言多样性上实现了3.5-8.8%的相对提升。这些结果与使用7种语言预训练的多语言神经网络相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting performance on low-resource languages by standard corpora: An analysis
In this paper, we analyze the feasibility of using single well-resourced language - English - as a source language for multilingual techniques in context of Stacked Bottle-Neck tandem system. The effect of amount of data and number of tied-states in the source language on performance of ported system is evaluated together with different porting strategies. Generally, increasing data amount and level-of-detail both is positive. A greater effect is observed for increasing number of tied states. The modified neural network structure, shown useful for multilingual porting, was also evaluated with its specific porting procedure. Using original NN structure in combination with modified porting adapt-adapt strategy was fount as best. It achieves relative improvement 3.5–8.8% on variety of target languages. These results are comparable with using multilingual NNs pretrained on 7 languages.
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