Graph-of-word and TW-IDF: new approach to ad hoc IR

F. Rousseau, M. Vazirgiannis
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引用次数: 147

Abstract

In this paper, we introduce novel document representation (graph-of-word) and retrieval model (TW-IDF) for ad hoc IR. Questioning the term independence assumption behind the traditional bag-of-word model, we propose a different representation of a document that captures the relationships between the terms using an unweighted directed graph of terms. From this graph, we extract at indexing time meaningful term weights (TW) that replace traditional term frequencies (TF) and from which we define a novel scoring function, namely TW-IDF, by analogy with TF-IDF. This approach leads to a retrieval model that consistently and significantly outperforms BM25 and in some cases its extension BM25+ on various standard TREC datasets. In particular, experiments show that counting the number of different contexts in which a term occurs inside a document is more effective and relevant to search than considering an overall concave term frequency in the context of ad hoc IR.
词图和TW-IDF:特殊IR的新方法
在本文中,我们引入了一种新的文本表示(词图)和检索模型(TW-IDF)。质疑传统词袋模型背后的术语独立性假设,我们提出了一种不同的文档表示,该表示使用术语的非加权有向图来捕获术语之间的关系。从这个图中,我们在索引时间提取有意义的术语权重(TW),取代传统的术语频率(TF),并由此定义一个新的评分函数,即TW- idf,类比TF- idf。这种方法产生的检索模型在各种标准TREC数据集上始终显著优于BM25,在某些情况下,它的扩展BM25+。特别是,实验表明,计算一个词在一个文档中出现的不同上下文的数量,比在特别的IR上下文中考虑一个整体的凹词频率更有效,更相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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