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Improved Auto-Marking Confidence for Spoken Language Assessment

机译:口语评估的自动标记信心得到改善

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Automatic assessment of spoken language proficiency is a sought-after technology. These systems often need to handle the operating scenario where candidates have a skill level or first language which was not encountered during the training stage. For high stakes tests it is necessary for those systems to have good grading performance when the candidate is from the same population as those contained in the training set, and they should know when they are likely to perform badly in the case when the candidate is not from the same population as the ones contained in training set. This paper focuses on using Deep Density Networks to yield auto-marking confidence. Firstly, we explore the benefits of parametrising either a predictive distribution or a posterior distribution over the parameters of the model likelihood and obtaining the predictive distribution via marginalisation. Secondly, we investigate how it is possible to act on the parametrised density in order to explicitly teach the model to have low confidence in areas of the observation space where there is no training data by assigning confidence scores to artificially generated data. Lastly, we compare the capabilities of Factor Analysis, Variational Auto-Encodes, and Wasserstein Generative Adversarial Networks to generate artificial data.
机译:自动评估口语能力是一种广受欢迎的技术。这些系统通常需要处理考生具有培训阶段未遇到的技能水平或第一语言的操作场景。对于高风险测试,当候选人与训练集中的人口相同时,这些系统必须具有良好的评分性能,并且他们应该知道何时候选人可能不及格而表现不佳。来自与训练集中的人群相同的人群。本文着重于使用深度密度网络来产生自动标记置信度。首先,我们探讨了对模型似然性参数进行预测分布或后验分布参数化并通过边缘化获得预测分布的好处。其次,我们研究如何对参数化的密度进行操作,以便通过将置信度得分分配给人工生成的数据来明确教导模型在没有训练数据的观察空间区域中具有低置信度。最后,我们比较了因子分析,变分自动编码和Wasserstein生成对抗性网络生成人工数据的能力。

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