利用基于图形的口语应答一致性新模型自动评估会话测试的口语水平

Jiun-Ting Li, Bi-Cheng Yan, Tien-Hong Lo, Yi-Cheng Wang, Yung-Chang Hsu, Berlin Chen
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引用次数: 0

摘要

会话测试中的自动口语评估(ASAC)旨在评估第二语言(L2)说话者在一个对话者与一个或多个候选人互动的环境中的整体口语水平。尽管之前的 ASAC 方法在各自的数据集上都表现出了良好的性能,但专门针对将对话中逻辑流的连贯性纳入评分模型的研究仍然十分匮乏。为了应对这一关键挑战,我们提出了一种分层图模型,该模型既能恰当地纳入广泛的应答间交互(如话语关系),也能纳入细微的语义信息(如语义词和说话者意图),然后将这些信息与上下文信息融合在一起进行最终预测。在 NICT-JLE 基准数据集上的大量实验结果表明,与一些强大的基准相比,我们提出的建模方法在各种评估指标上都能显著提高预测准确性。这也揭示了在 ASAC 中研究口语回答的连贯性相关方面的重要性。
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Automated Speaking Assessment of Conversation Tests with Novel Graph-based Modeling on Spoken Response Coherence
Automated speaking assessment in conversation tests (ASAC) aims to evaluate the overall speaking proficiency of an L2 (second-language) speaker in a setting where an interlocutor interacts with one or more candidates. Although prior ASAC approaches have shown promising performance on their respective datasets, there is still a dearth of research specifically focused on incorporating the coherence of the logical flow within a conversation into the grading model. To address this critical challenge, we propose a hierarchical graph model that aptly incorporates both broad inter-response interactions (e.g., discourse relations) and nuanced semantic information (e.g., semantic words and speaker intents), which is subsequently fused with contextual information for the final prediction. Extensive experimental results on the NICT-JLE benchmark dataset suggest that our proposed modeling approach can yield considerable improvements in prediction accuracy with respect to various assessment metrics, as compared to some strong baselines. This also sheds light on the importance of investigating coherence-related facets of spoken responses in ASAC.
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