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Leveraging frame semantics and distributional semantics for unsupervised semantic slot induction in spoken dialogue systems

机译:利用框架语义和分布语义在口语对话系统中进行无监督的语义槽归纳

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Distributional semantics and frame semantics are two representative views on language understanding in the statistical world and the linguistic world, respectively. In this paper, we combine the best of two worlds to automatically induce the semantic slots for spoken dialogue systems. Given a collection of unlabeled audio files, we exploit continuous-valued word embeddings to augment a probabilistic frame-semantic parser that identifies key semantic slots in an unsupervised fashion. In experiments, our results on a real-world spoken dialogue dataset show that the distributional word representations significantly improve the adaptation of FrameNet-style parses of ASR decodings to the target semantic space; that comparing to a state-of-the-art baseline, a 13% relative average precision improvement is achieved by leveraging word vectors trained on two 100-billion words datasets; and that the proposed technology can be used to reduce the costs for designing task-oriented spoken dialogue systems.
机译:分布语义学和框架语义学分别是统计世界和语言世界中语言理解的两种代表性观点。在本文中,我们结合了两个世界的优点,自动为语音对话系统引入了语义槽。给定一系列未标记的音频文件,我们利用连续值的单词嵌入来增强概率帧语义解析器,该解析器以无监督的方式识别关键的语义槽。在实验中,我们在真实世界的口语对话数据集上的结果表明,分布词表示法显着提高了ASR解码的FrameNet样式解析对目标语义空间的适应性;与最先进的基准相比,通过利用在两个1000亿个单词数据集上训练的单词矢量,相对平均精度提高了13%;并且可以将所提出的技术用于降低设计面向任务的口头对话系统的成本。

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