Semi-supervised training of Deep Neural Networks

Karel Veselý, M. Hannemann, L. Burget
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引用次数: 137

Abstract

In this paper we search for an optimal strategy for semi-supervised Deep Neural Network (DNN) training. We assume that a small part of the data is transcribed, while the majority of the data is untranscribed. We explore self-training strategies with data selection based on both the utterance-level and frame-level confidences. Further on, we study the interactions between semi-supervised frame-discriminative training and sequence-discriminative sMBR training. We found it beneficial to reduce the disproportion in amounts of transcribed and untranscribed data by including the transcribed data several times, as well as to do a frame-selection based on per-frame confidences derived from confusion in a lattice. For the experiments, we used the Limited language pack condition for the Surprise language task (Vietnamese) from the IARPA Babel program. The absolute Word Error Rate (WER) improvement for frame cross-entropy training is 2.2%, this corresponds to WER recovery of 36% when compared to the identical system, where the DNN is built on the fully transcribed data.
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深度神经网络的半监督训练
本文研究半监督深度神经网络(DNN)训练的最优策略。我们假设一小部分数据已转录,而大部分数据未转录。我们探索了基于话语级和框架级自信的数据选择的自我训练策略。在此基础上,我们进一步研究了半监督框架判别训练和序列判别sMBR训练之间的相互作用。我们发现,通过多次包含转录数据来减少转录和未转录数据数量的不比例,以及基于从晶格中混乱派生的每帧置信度进行帧选择是有益的。对于实验,我们使用了来自IARPA Babel计划的惊喜语言任务(越南语)的有限语言包条件。帧交叉熵训练的绝对字错误率(WER)改善为2.2%,与相同系统相比,这相当于36%的WER恢复,其中DNN建立在完全转录的数据上。
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