基于本质向量的口语文档检索查询建模

Kuan-Yu Chen, Shih-Hung Liu, Berlin Chen, H. Wang
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引用次数: 2

摘要

语音文档检索(SDR)已成为一个突出的应用需求,因为在我们的日常生活中,多媒体数据随着语音的空前庞大而变得可用。据我们所知,在引入无监督段嵌入方法以及研究这些方法在SDR任务上的有效性方面的工作相对较少。本文首先提出了一种新的段落嵌入方法——本质向量模型(essence vector model, EV),该模型通过封装段落中最具代表性的信息,同时排除一般背景信息,来推断给定段落的表示。在EV模型的基础上,我们开发了三种查询语言建模机制来提高检索性能。在两个基准集合上进行的一系列经验SDR实验表明,与现有的几个强基线系统相比,所提出的框架具有良好的有效性。
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Essence Vector-Based Query Modeling for Spoken Document Retrieval
Spoken document retrieval (SDR) has become a prominently required application since unprecedented volumes of multimedia data along with speech have become available in our daily life. As far as we are aware, there has been relatively less work in launching unsupervised paragraph embedding methods and investigating the effectiveness of these methods on the SDR task. This paper first presents a novel paragraph embedding method, named the essence vector (EV) model, which aims at inferring a representation for a given paragraph by encapsulating the most representative information from the paragraph and excluding the general background information at the same time. On top of the EV model, we develop three query language modeling mechanisms to improve the retrieval performance. A series of empirical SDR experiments conducted on two benchmark collections demonstrate the good efficacy of the proposed framework, compared to several existing strong baseline systems.
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