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Exploiting Machine-Transcribed Dialog Corpus to Improve Multiple Dialog States Tracking Methods

机译:利用机器转录的对话语料库改进多种对话状态跟踪方法

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This paper proposes the use of unsuper-vised approaches to improve components of partition-based belief tracking systems. The proposed method adopts a dynamic Bayesian network to learn the user action model directly from a machine-transcribed dialog corpus. It also addresses confidence score calibration to improve the observation model in a unsuper-vised manner using dialog-level grounding information. To verify the effectiveness of the proposed method, we applied it to the Let's Go domain (Raux et al., 2005). Overall system performance for several comparative models were measured. The results show that the proposed method can learn an effective user action model without human intervention. In addition, the calibrated confidence score was verified by demonstrating the positive influence on the user action model learning process and on overall system performance.
机译:本文提出了使用无监督方法来改进基于分区的信念跟踪系统的组件。所提出的方法采用动态贝叶斯网络直接从机器翻译的对话语料库中学习用户动作模型。它还解决了置信度分数校准问题,以使用对话级别的接地信息以无监督的方式改进观察模型。为了验证所提方法的有效性,我们将其应用于Let'Go领域(Raux等,2005)。测量了几个比较模型的整体系统性能。结果表明,该方法无需人工干预就能学习有效的用户行为模型。此外,通过展示对用户行为模型学习过程和整体系统性能的积极影响,可以验证校准后的置信度得分。

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