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Improving Ll-Specific Phonological Error Diagnosis in Computer Assisted Pronunciation Training

机译:改善计算机辅助发音培训的LL特定语音误差诊断

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With the increasing use of technology in classrooms, computer assisted pronunciation training (CAPT) is becoming a vital tool in language learning. In this paper, we present a system that takes advantage of data from learners of a specific L1 to better model phonological errors at various levels in the system. At the lexical level, a statistical machine translation approach is used to model common phonological errors produced by a specific L1 population. At the acoustic level, L1-dependent maximum likelihood (ML) normative models and discriminative training are explored. In our experiments, use of a Korean language dependent nonnative lexicon gives us diagnostic abilities that did not exist in our baseline configuration. Replacing the native ML acoustic model with the L1-dependent nonnative model produces relative improvements of 27-37% in precision for phone detection/identification tasks. We also propose a constrained variant of minimum phone error (MPE) training which is better adapted to phone detection/diagnosis. This technique produces 5-6% relative improvement in precision in comparison to ML nonnative acoustic models.
机译:随着在教室里越来越多的技术,计算机辅助发音培训(CAPT)正在成为语言学习的重要工具。在本文中,我们提出了一种系统,该系统利用特定L1的学习者从系统中的各个级别的更好模型音韵误差。在词汇水平,统计机器翻译方法用于建模由特定L1群体产生的常见声音误差。在声学水平处,探讨了L1依赖性最大可能性(ML)规范模型和鉴别性培训。在我们的实验中,使用韩语依赖非初始词典提供了我们基准配置中不存在的诊断能力。用L1依赖性非脉冲模型替换本地ML声学模型,在电话检测/识别任务的精确度产生27-37%的相对改善。我们还提出了一个受限制的最低电话错误(MPE)训练的变体,这更好地适应电话检测/诊断。与ML非脉冲声学模型相比,该技术的精度具有5-6%的相对改善。

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