An LDA-smoothed relevance model for document expansion: a case study for spoken document retrieval

Debasis Ganguly, Johannes Leveling, G. Jones
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引用次数: 10

Abstract

Document expansion (DE) in information retrieval (IR) involves modifying each document in the collection by introducing additional terms into the document. It is particularly useful to improve retrieval of short and noisy documents where the additional terms can improve the description of the document content. Existing approaches to DE assume that documents to be expanded are from a single topic. In the case of multi-topic documents this can lead to a topic bias in terms selected for DE and hence may result in poor retrieval quality due to the lack of coverage of the original document topics in the expanded document. This paper proposes a new DE technique providing a more uniform selection and weighting of DE terms from all constituent topics. We show that our proposed method significantly outperforms the most recently reported relevance model based DE method on a spoken document retrieval task for both manual and automatic speech recognition transcripts.
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用于文档扩展的lda平滑关联模型:口头文档检索的案例研究
信息检索(IR)中的文档扩展(DE)涉及通过在文档中引入附加术语来修改集合中的每个文档。它对于改进简短和嘈杂文档的检索特别有用,其中附加的术语可以改进对文档内容的描述。现有的DE方法假设要展开的文档来自单个主题。在多主题文档的情况下,这可能导致为DE选择的术语的主题偏差,因此可能导致检索质量差,因为扩展文档中缺乏对原始文档主题的覆盖。本文提出了一种新的DE技术,从所有组成主题中提供更统一的DE术语选择和加权。我们表明,我们提出的方法在手动和自动语音识别转录本的语音文档检索任务上显著优于最近报道的基于关联模型的DE方法。
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