End-to-end training approaches for discriminative segmental models

Hao Tang, Weiran Wang, Kevin Gimpel, Karen Livescu
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引用次数: 7

Abstract

Recent work on discriminative segmental models has shown that they can achieve competitive speech recognition performance, using features based on deep neural frame classifiers. However, segmental models can be more challenging to train than standard frame-based approaches. While some segmental models have been successfully trained end to end, there is a lack of understanding of their training under different settings and with different losses.
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判别分段模型的端到端训练方法
最近对判别分段模型的研究表明,它们可以使用基于深度神经框架分类器的特征来实现竞争性的语音识别性能。然而,片段模型的训练可能比标准的基于框架的方法更具挑战性。虽然一些分段模型已经成功地端到端训练,但缺乏对不同设置和不同损失下的训练的理解。
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