应用特征套袋更准确和强大的自动说话评估

L. Chen
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引用次数: 1

摘要

在自动口语评估系统中使用的评分模型对于实现准确和可靠的口语技能自动评分至关重要。在自动语音评估研究领域,使用单一分类器模型仍是主流方法。然而,集成学习依赖于一个分类器委员会共同预测(克服每个分类器的弱点),已经被机器学习研究者积极提倡,并广泛应用于许多机器学习任务中。在本文中,我们研究了一种特殊的集成学习方法——特征bagging在非母语自发语音自动评分任务中的应用。我们的实验表明,该方法在评分精度和鲁棒性方面优于使用单个分类器的方法,以应对可能的特征变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying feature bagging for more accurate and robust automated speaking assessment
The scoring model used in automated speaking assessment systems is critical for achieving accurate and robust scoring of speaking skills automatically. In the automated speaking assessment research field, using a single classifier model is still a dominant approach. However, ensemble learning, which relies on a committee of classifiers to predict jointly (to overcome each individual classifier's weakness) has been actively advocated by the machine learning researchers and widely used in many machine learning tasks. In this paper, we investigated applying a special ensemble learning method, feature-bagging, on the task of automatically scoring non-native spontaneous speech. Our experiments show that this method is superior to the method of using a single classifier in terms of scoring accuracy and the robustness to cope with possible feature variations.
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