Unsupervised induction and filling of semantic slots for spoken dialogue systems using frame-semantic parsing

Yun-Nung (Vivian) Chen, William Yang Wang, Alexander I. Rudnicky
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引用次数: 88

Abstract

Spoken dialogue systems typically use predefined semantic slots to parse users' natural language inputs into unified semantic representations. To define the slots, domain experts and professional annotators are often involved, and the cost can be expensive. In this paper, we ask the following question: given a collection of unlabeled raw audios, can we use the frame semantics theory to automatically induce and fill the semantic slots in an unsupervised fashion? To do this, we propose the use of a state-of-the-art frame-semantic parser, and a spectral clustering based slot ranking model that adapts the generic output of the parser to the target semantic space. Empirical experiments on a real-world spoken dialogue dataset show that the automatically induced semantic slots are in line with the reference slots created by domain experts: we observe a mean averaged precision of 69.36% using ASR-transcribed data. Our slot filling evaluations also indicate the promising future of this proposed approach.
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基于框架语义分析的口语对话系统语义槽的无监督归纳和填充
口语对话系统通常使用预定义的语义槽将用户的自然语言输入解析为统一的语义表示。要定义插槽,通常需要领域专家和专业注释人员,而且成本可能很高。在本文中,我们提出了以下问题:给定一组未标记的原始音频,我们是否可以使用框架语义理论以无监督的方式自动归纳和填充语义槽?为此,我们建议使用最先进的帧语义解析器,以及基于谱聚类的槽排序模型,该模型使解析器的一般输出适应目标语义空间。在真实口语对话数据集上的实证实验表明,自动生成的语义槽与领域专家创建的参考槽一致:我们观察到使用asr转录数据的平均精度为69.36%。我们的槽填充评估也表明了该方法的良好前景。
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