Statistical semantic interpretation modeling for spoken language understanding with enriched semantic features

Asli Celikyilmaz, Dilek Z. Hakkani-Tür, Gökhan Tür
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引用次数: 9

Abstract

In natural language human-machine statistical dialog systems, semantic interpretation is a key task typically performed following semantic parsing, and aims to extract canonical meaning representations of semantic components. In the literature, usually manually built rules are used for this task, even for implicitly mentioned non-named semantic components (like genre of a movie or price range of a restaurant). In this study, we present statistical methods for modeling interpretation, which can also benefit from semantic features extracted from large in-domain knowledge sources. We extract features from user utterances using a semantic parser and additional semantic features from textual sources (online reviews, synopses, etc.) using a novel tree clustering approach, to represent unstructured information that correspond to implicit semantic components related to targeted slots in the user's utterances. We evaluate our models on a virtual personal assistance system and demonstrate that our interpreter is effective in that it does not only improve the utterance interpretation in spoken dialog systems (reducing the interpretation error rate by 36% relative compared to a language model baseline), but also unveils hidden semantic units that are otherwise nearly impossible to extract from purely manual lexical features that are typically used in utterance interpretation.
面向语义特征丰富的口语理解的统计语义解释建模
在自然语言人机统计对话系统中,语义解释是语义分析之后的一项关键任务,旨在提取语义组件的规范意义表示。在文献中,通常手工构建的规则用于此任务,甚至对于隐式提到的非命名语义组件(如电影类型或餐馆的价格范围)也是如此。在本研究中,我们提出了建模解释的统计方法,这也可以受益于从大量领域内知识来源中提取的语义特征。我们使用语义解析器从用户话语中提取特征,并使用新颖的树聚类方法从文本源(在线评论,概要等)中提取额外的语义特征,以表示与用户话语中与目标槽相关的隐含语义组件对应的非结构化信息。我们在虚拟个人辅助系统上评估了我们的模型,并证明我们的解释器是有效的,因为它不仅提高了口语对话系统中的话语解释(与语言模型基线相比,将解释错误率降低了36%),而且还揭示了隐藏的语义单元,否则这些语义单元几乎不可能从话语解释中通常使用的纯手动词汇特征中提取出来。
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