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Unsupervised topic modeling for leader detection in spoken discourse

机译:无监督话题建模,用于语音对话中的领导者检测

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In this paper, we describe a method for leader detection in multi-party spoken discourse that relies on unsupervised topic modeling to segment the discourse automatically. Latent Dirichlet allocation is applied to sliding temporal windows of utterances, resulting in a topic model which captures the fluid transitions from topic to topic which occur in multi-party discourse. Further processing discretizes the continuous topic mixtures into sequential topic segments. Features are extracted from topic shift regions and used to train a binary role classifier. The added topic shift features significantly improve the baseline performance on two corpora, demonstrating both the value of the features and the robustness of the unsupervised segmentation. Furthermore, our classification results on the ICSI corpus, using automatically segmented topics, are better than the results using ground truth segmentations.
机译:在本文中,我们描述了一种基于无监督主题建模的多方口语对话中的领导者检测方法,可以自动分割对话。潜在狄利克雷分配应用于发声的滑动时间窗口,从而形成主题模型,该模型捕获在多方话语中发生的从主题到主题的流畅过渡。进一步的处理将连续的主题混合离散为连续的主题片段。从主题转移区域中提取特征,并将其用于训练二进制角色分类器。新增的主题转移功能显着提高了两个语料库的基线性能,既展示了功能的价值,又展示了无监督分割的稳健性。此外,我们使用自动分段主题在ICSI语料库上的分类结果要好于使用地面真相分段的结果。

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