Model Adaptation for Dialog Act Tagging

Gökhan Tür, Ümit Güz, Dilek Z. Hakkani-Tür
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引用次数: 8

Abstract

In this paper, we analyze the effect of model adaptation for dialog act tagging. The goal of adaptation is to improve the performance of the tagger using out-of-domain data or models. Dialog act tagging aims to provide a basis for further discourse analysis and understanding in conversational speech. In this study we used the ICSI meeting corpus with high-level meeting recognition dialog act (MRDA) tags, that is, question, statement, backchannel, disruptions, and floor grabbers/holders. We performed controlled adaptation experiments using the Switchboard (SWBD) corpus with SWBD-DAMSL tags as the out-of-domain corpus. Our results indicate that we can achieve significantly better dialog act tagging by automatically selecting a subset of the Switchboard corpus and combining the confidences obtained by both in-domain and out-of-domain models via logistic regression, especially when the in-domain data is limited.
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对话行为标注的模型自适应
本文分析了模型自适应对对话行为标注的影响。自适应的目标是使用域外数据或模型来提高标注器的性能。对话行为标注的目的是为进一步的语篇分析和理解提供基础。在这项研究中,我们使用了ICSI会议语料库和高级会议识别对话行为(MRDA)标签,即问题、陈述、反向通道、中断和地板抓取者/持有者。采用SWBD- damsl标签作为域外语料库,对SWBD语料库进行了控制自适应实验。我们的研究结果表明,我们可以通过自动选择交换机语料库的一个子集,并通过逻辑回归结合域内和域外模型获得的置信度,特别是当域内数据有限时,我们可以实现更好的对话行为标记。
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