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Multitask Learning for Adaptive Quality Estimation of Automatically Transcribed Utterances

机译:多任务学习用于自动转录话语的自适应质量估计

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We investigate the problem of predicting the quality of automatic speech recognition (ASR) output under the following rigid constraints: ⅰ) reference transcriptions are not available, ⅱ) confidence information about the system that produced the transcriptions is not accessible, and ⅲ) training and test data come from multiple domains. To cope with these constraints (typical of the constantly increasing amount of automatic transcriptions that can be found on the Web), we propose a domain-adaptive approach based on multitask learning. Different algorithms and strategies are evaluated with English data coming from four domains, showing that the proposed approach can cope with the limitations of previously proposed single task learning methods.
机译:我们调查预测以下刚性约束下的自动语音识别(ASR)输出的质量的问题:Ⅰ)参考转录,Ⅱ)关于产生转录的系统的信心信息是不可访问的,Ⅲ)培训和Ⅲ)培训测试数据来自多个域。为了应对这些约束(典型的不断增加的可以在网上找到的自动转录量),我们提出了一种基于多任务学习的域 - 自适应方法。使用来自四个域的英文数据进行评估不同的算法和策略,表明所提出的方法可以应对先前提出的单个任务学习方法的局限性。

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