基于边界检测的语音槽填充有限生成框架

Pengwei Wang, Yinpei Su, Xiaohuan Zhou, Xin Ye, Liangchen Wei, Ming Liu, Yuan You, Feijun Jiang
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引用次数: 1

摘要

补槽是口语理解的重要组成部分。与从ASR输出中提取槽的传统管道方法相比,端到端方法直接从分类或生成框架内的语音中获取槽。然而,分类依赖于预定义的类别,这是不可扩展的,并且生成模型是在开放域空间中解码的,受语音槽边界模糊的影响。为了解决这两种计算的缺点,我们提出了一种新的用于插槽填充的编码器-解码器框架,名为Speech2Slot,利用具有边界检测的有限生成方法。我们还发布了一个大规模的中文语音槽填充数据集,命名为中文语音导航数据集(VNDC)。在VNDC上的实验表明,我们的模型明显优于其他方法,比目前最先进的槽填充方法准确率提高了6.65%。我们公开了我们的代码1,供研究人员复制和构建我们的工作。
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Speech2Slot: A Limited Generation Framework with Boundary Detection for Slot Filling from Speech
Slot filling is an essential component of Spoken Language Understanding. In contrast to conventional pipeline approaches, which extract slots from the ASR output, end-to-end approaches directly get slots from speech within a classification or generation framework. However, classification relies on predefined categories, which is not scal-able, and the generative model is decoding in an open-domain space, suffering from blurred boundaries of slots in speech. To address the shortcomings of these two for-mulations, we propose a new encoder-decoder framework for slot filling, named Speech2Slot, leveraging a limited generation method with boundary detection. We also released a large-scale Chinese spoken slot filling dataset named Voice Navigation Dataset in Chinese (VNDC). Experiments on VNDC show that our model is markedly superior to other approaches, outperforming the state-of-the-art slot filling approach with 6.65% accuracy improvement. We make our code 1 publicly available for researchers to replicate and build on our work.
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