Bigger versus Similar: Selecting a Background Corpus for First Story Detection Based on Distributional Similarity

Fei Wang, R. Ross, John D. Kelleher
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引用次数: 2

Abstract

The current state of the art for First Story Detection (FSD) are nearest neighbour-based models with traditional term vector representations; however, one challenge faced by FSD models is that the document representation is usually defined by the vocabulary and term frequency from a background corpus. Consequently, the ideal background corpus should arguably be both large-scale to ensure adequate term coverage, and similar to the target domain in terms of the language distribution. However, given these two factors cannot always be mutually satisfied, in this paper we examine whether the distributional similarity of common terms is more important than the scale of common terms for FSD. As a basis for our analysis we propose a set of metrics to quantitatively measure the scale of common terms and the distributional similarity between corpora. Using these metrics we rank different background corpora relative to a target corpus. We also apply models based on different background corpora to the FSD task. Our results show that term distributional similarity is more predictive of good FSD performance than the scale of common terms; and, thus we demonstrate that a smaller recent domain-related corpus will be more suitable than a very large-scale general corpus for FSD.
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大与相似:基于分布相似度为第一故事检测选择背景语料库
目前,第一故事检测(FSD)的最新技术是基于最近邻的模型,具有传统的术语向量表示;然而,FSD模型面临的一个挑战是,文档表示通常由来自背景语料库的词汇表和术语频率定义。因此,理想的背景语料库应该是大规模的,以确保足够的术语覆盖,并在语言分布方面与目标领域相似。然而,考虑到这两个因素并不总是相互满足,在本文中,我们研究了共同项的分布相似度是否比共同项的规模更重要。作为我们分析的基础,我们提出了一套指标来定量地衡量共同术语的规模和语料库之间的分布相似度。使用这些指标,我们将不同的背景语料库相对于目标语料库进行排序。我们还将基于不同背景语料库的模型应用于FSD任务。结果表明,项分布相似度比常用项的尺度更能预测良好的FSD性能;因此,我们证明了一个较小的近期领域相关语料库将比一个非常大规模的通用语料库更适合FSD。
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