cs.AI updates on arXiv.org 09月22日
新型多模态SLA评估模型
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本文提出一种新型多模态基础模型,对二语英语学习者的口语能力进行评估,通过结合多目标学习与 Whisper ASR 模型,实现无特征工程的整体和特质级目标学习,提高评估的准确性和泛化能力。

arXiv:2509.16025v1 Announce Type: cross Abstract: Spoken Language Assessment (SLA) estimates a learner's oral proficiency from spontaneous speech. The growing population of L2 English speakers has intensified the demand for reliable SLA, a critical component of Computer Assisted Language Learning (CALL). Existing efforts often rely on cascaded pipelines, which are prone to error propagation, or end-to-end models that often operate on a short audio window, which might miss discourse-level evidence. This paper introduces a novel multimodal foundation model approach that performs session-level evaluation in a single pass. Our approach couples multi-target learning with a frozen, Whisper ASR model-based speech prior for acoustic-aware calibration, allowing for jointly learning holistic and trait-level objectives of SLA without resorting to handcrafted features. By coherently processing the entire response session of an L2 speaker, the model excels at predicting holistic oral proficiency. Experiments conducted on the Speak & Improve benchmark demonstrate that our proposed approach outperforms the previous state-of-the-art cascaded system and exhibits robust cross-part generalization, producing a compact deployable grader that is tailored for CALL applications.

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口语评估 多模态模型 计算机辅助语言学习
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