首页> 外文会议>Annual conference of the International Speech Communication Association;INTERSPEECH 2010 >Decision Tree Based Tone Modeling with Corrective Feedbacks for Automatic Mandarin Tone Assessment
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Decision Tree Based Tone Modeling with Corrective Feedbacks for Automatic Mandarin Tone Assessment

机译:基于决策树的带有正反馈的语气建模,用于自动汉语普通话评估

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We propose a novel decision tree based approach to Mandarin tone assessment. In most conventional computer assisted pronunciation training (CAPT) scenarios a tone production template is prepared as a reference with only numeric scores as feedbacks for tone learning. In contrast decision trees trained with an annotated tone-balanced corpus make use of a collection of questions related to important cues in categories of tone production. By traversing the corresponding paths and nodes associated with a test utterance a sequence of corrective comments can be generated to guide the learner for potential improvement. Therefore a detailed pronunciation indication or a comparison between two paths can be provided to learners which are usually unavailable in score-based CAPT systems.
机译:我们提出了一种新颖的基于决策树的普通话语调评估方法。在大多数传统的计算机辅助发音训练(CAPT)方案中,准备一个音调产生模板作为参考,仅将数字分数作为音调学习的反馈。相反,用带注释的语气平衡语料训练的决策树利用了与语气产生类别中的重要线索有关的问题集。通过遍历与测试话语相关的相应路径和节点,可以生成一系列纠正性注释,以指导学习者进行潜在的改进。因此,可以向学习者提供详细的发音指示或两个路径之间的比较,这通常在基于分数的CAPT系统中是不可用的。

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