基于LF-MMI训练神经网络的ASR迁移学习研究

Pegah Ghahremani, Vimal Manohar, Hossein Hadian, Daniel Povey, S. Khudanpur
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引用次数: 75

摘要

在ASR应用中,与测试数据相对应的域外数据较多,与测试数据相对应的域内数据较少。在本文中,我们研究了利用这些域外数据改进基于无格MMI (LF-MMI)的ASR模型的不同方法。特别是,我们使用具有共享隐藏层的网络进行多任务训练实验;我们尝试各种方法将以前训练过的模型适应到一个新的领域。与域内模型相比,这两种方法在减少WER方面都是有效的,联合训练的模型通常会有更大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of transfer learning for ASR using LF-MMI trained neural networks
It is common in applications of ASR to have a large amount of data out-of-domain to the test data and a smaller amount of in-domain data similar to the test data. In this paper, we investigate different ways to utilize this out-of-domain data to improve ASR models based on Lattice-free MMI (LF-MMI). In particular, we experiment with multi-task training using a network with shared hidden layers; and we try various ways of adapting previously trained models to a new domain. Both types of methods are effective in reducing the WER versus in-domain models, with the jointly trained models generally giving more improvement.
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