A new weighting scheme and discriminative approach for information retrieval in static and dynamic document collections

O. Ibrahim, Dario Landa Silva
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引用次数: 8

Abstract

This paper introduces a new weighting scheme in information retrieval. It also proposes using the document centroid as a threshold for normalizing documents in a document collection. Document centroid normalization helps to achieve more effective information retrieval as it enables good discrimination between documents. In the context of a machine learning application, namely unsupervised document indexing and retrieval, we compared the effectiveness of the proposed weighting scheme to the `Term Frequency - Inverse Document Frequency' or TF-IDF, which is commonly used and considered as one of the best existing weighting schemes. The paper shows how the document centroid is used to remove less significant weights from documents and how this helps to achieve better retrieval effectiveness. Most of the existing weighting schemes in information retrieval research assume that the whole document collection is static. The results presented in this paper show that the proposed weighting scheme can produce higher retrieval effectiveness compared with the TF-IDF weighting scheme, in both static and dynamic document collections. The results also show the variation in information retrieval effectiveness that is achieved for static and dynamic document collections by using a specific weighting scheme. This type of comparison has not been presented in the literature before.
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静态和动态文档集合信息检索的一种新的权重方案和判别方法
介绍了一种新的信息检索加权方案。它还建议使用文档质心作为规范化文档集合中的文档的阈值。文档质心规范化有助于实现更有效的信息检索,因为它可以很好地区分文档。在机器学习应用的背景下,即无监督文档索引和检索,我们将所提出的加权方案的有效性与“术语频率-逆文档频率”或TF-IDF进行了比较,TF-IDF是常用的,被认为是现有最好的加权方案之一。本文展示了如何使用文档质心从文档中去除不太重要的权重,以及如何帮助实现更好的检索效率。在信息检索研究中,现有的权重方案大多假设整个文档集合是静态的。结果表明,与TF-IDF加权方案相比,本文提出的加权方案在静态和动态文档集合中都能产生更高的检索效率。结果还显示了通过使用特定的加权方案来实现静态和动态文档集合的信息检索效率的差异。这种类型的比较在以前的文献中没有出现过。
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